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								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
							<ml:real>1</ml:real>
						</ml:define>
					</math>
					<rendering item-idref="16"/>
				</region>
				<region region-id="981" left="456" top="327" width="44.25" height="18" align-x="487.5" align-y="336" show-border="false" show-highlight="true" is-protected="false" z-order="0" background-color="#80ff80" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">Jy_B</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
							<ml:real>0</ml:real>
						</ml:define>
					</math>
					<rendering item-idref="17"/>
				</region>
				<region region-id="982" left="540" top="327" width="42.75" height="18" align-x="570" align-y="336" show-border="false" show-highlight="true" is-protected="false" z-order="0" background-color="#80ff80" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">Jz_B</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
							<ml:real>1</ml:real>
						</ml:define>
					</math>
					<rendering item-idref="18"/>
				</region>
			</area>
			<rendering item-idref="19"/>
		</region>
		<region region-id="984" left="0" top="435" width="6000" align-x="6000" align-y="444" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="" height="152.25">
			<area is-collapsed="false" name="" show-name="false" show-border="true" show-icon="true" show-timestamp="true" allow-expand="false" is-locked="false" timestamp="" top-lock-id="984" bottom-lock-id="992" bottom-tag="">
				<region region-id="985" left="42" top="446.25" width="375.75" height="24" align-x="42" align-y="456" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<text use-page-width="false" push-down="false" lock-width="true">
						<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">
							<f family="Arial CYR" charset="204">
								<inlineAttr line-through="false">Этот блок просто для отображения проводов в трехмерном пространтстве, расчеты эти не влияют на расчет поля!</inlineAttr>
							</f>
						</p>
					</text>
				</region>
				<region region-id="986" left="42" top="483" width="71.25" height="18" align-x="79.5" align-y="492" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">x_A</ml:id>
								<ml:sequence>
									<ml:id xml:space="preserve">y</ml:id>
									<ml:id xml:space="preserve">z</ml:id>
								</ml:sequence>
							</ml:apply>
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">x0_A</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
						</ml:define>
					</math>
					<rendering item-idref="20"/>
				</region>
				<region region-id="987" left="342" top="489" width="68.25" height="18" align-x="378" align-y="498" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">x_B</ml:id>
								<ml:sequence>
									<ml:id xml:space="preserve">y</ml:id>
									<ml:id xml:space="preserve">z</ml:id>
								</ml:sequence>
							</ml:apply>
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">x0_B</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
						</ml:define>
					</math>
					<rendering item-idref="21"/>
				</region>
				<region region-id="988" left="42" top="513" width="74.25" height="18" align-x="81" align-y="522" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">y_A</ml:id>
								<ml:sequence>
									<ml:id xml:space="preserve">y</ml:id>
									<ml:id xml:space="preserve">z</ml:id>
								</ml:sequence>
							</ml:apply>
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">y0_A</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
						</ml:define>
					</math>
					<rendering item-idref="22"/>
				</region>
				<region region-id="989" left="342" top="519" width="71.25" height="18" align-x="379.5" align-y="528" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">y_B</ml:id>
								<ml:sequence>
									<ml:id xml:space="preserve">y</ml:id>
									<ml:id xml:space="preserve">z</ml:id>
								</ml:sequence>
							</ml:apply>
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">y0_B</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
						</ml:define>
					</math>
					<rendering item-idref="23"/>
				</region>
				<region region-id="990" left="42" top="543" width="71.25" height="18" align-x="79.5" align-y="552" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">z_A</ml:id>
								<ml:sequence>
									<ml:id xml:space="preserve">y</ml:id>
									<ml:id xml:space="preserve">z</ml:id>
								</ml:sequence>
							</ml:apply>
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">z0_A</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
						</ml:define>
					</math>
					<rendering item-idref="24"/>
				</region>
				<region region-id="991" left="342" top="549" width="68.25" height="18" align-x="378" align-y="558" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">z_B</ml:id>
								<ml:sequence>
									<ml:id xml:space="preserve">y</ml:id>
									<ml:id xml:space="preserve">z</ml:id>
								</ml:sequence>
							</ml:apply>
							<ml:apply>
								<ml:indexer/>
								<ml:id xml:space="preserve">z0_B</ml:id>
								<ml:id xml:space="preserve">z</ml:id>
							</ml:apply>
						</ml:define>
					</math>
					<rendering item-idref="25"/>
				</region>
			</area>
			<rendering item-idref="26"/>
		</region>
		<region region-id="993" left="30" top="612" width="265.5" height="279.75" align-x="162" align-y="612" show-border="false" show-highlight="false" is-protected="false" z-order="0" background-color="inherit" tag="">
			<component hide-arguments="false" clsid-buddy="013500E0-1122-11DB-9380-000D56C6051A" item-idref="27" disable-calc="false">
				<inputs>
					<ml:sequence xmlns:ml="http://schemas.mathsoft.com/math30">
						<ml:parens>
							<ml:sequence>
								<ml:id xml:space="preserve">x_A</ml:id>
								<ml:id xml:space="preserve">y_A</ml:id>
								<ml:id xml:space="preserve">z_A</ml:id>
							</ml:sequence>
						</ml:parens>
						<ml:parens>
							<ml:sequence>
								<ml:id xml:space="preserve">x_B</ml:id>
								<ml:id xml:space="preserve">y_B</ml:id>
								<ml:id xml:space="preserve">z_B</ml:id>
							</ml:sequence>
						</ml:parens>
					</ml:sequence>
				</inputs>
				<outputs/>
			</component>
			<rendering item-idref="28"/>
		</region>
		<region region-id="994" left="366" top="626.25" width="291.75" height="12" align-x="366" align-y="636" show-border="false" show-highlight="true" is-protected="true" z-order="0" background-color="#ff8040" tag="">
			<text use-page-width="false" push-down="false" lock-width="true">
				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">
					<f family="Arial CYR" charset="204">
						<inlineAttr line-through="false">Размещение проводников с током в исследуемом объеме</inlineAttr>
					</f>
				</p>
			</text>
		</region>
		<region region-id="995" left="0" top="933" width="6000" align-x="6000" align-y="942" show-border="true" show-highlight="true" is-protected="false" z-order="0" background-color="#0080ff" tag="" height="908.25">
			<area is-collapsed="false" name="Закон Био-Савара(вект.произв.)" show-name="true" show-border="true" show-icon="true" show-timestamp="true" allow-expand="false" is-locked="false" timestamp="" top-lock-id="995" bottom-lock-id="1008" bottom-tag="">
				<region region-id="996" left="6" top="950.25" width="774" height="48" align-x="6" align-y="960" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<text use-page-width="false" push-down="false" lock-width="true">
						<p style="Normal" margin-left="0" margin-right="0" text-indent="inherit" text-align="left" list-style-type="inherit" tabs="inherit">
							<f family="Arial CYR" charset="204">
								<inlineAttr line-through="false">Формулы для вычисления векторного произведения. Формулы для Hx1, Hy1, Hz1 - </inlineAttr>
							</f>
						</p>
						<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">
							<f family="Arial CYR" charset="204">
								<inlineAttr line-through="false">вычисляют составляющие векторного произведения векторов плотности тока Jx,Jy,Jz и радиус вектора точки с координатами точки x,y,z. Вычисления производятся для каждого сечения плоскость zn. Таким образом будем иметь составляющие вектора напряженности магнитного поля для каждой точки x,y в каждой секущей плоскости zn. Т.е. получается zn матриц размеров x*y</inlineAttr>
							</f>
						</p>
					</text>
				</region>
				<region region-id="997" left="18" top="1035" width="543" height="159" align-x="108" align-y="1044" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:function>
								<ml:id xml:space="preserve">Hx1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">Jy</ml:id>
									<ml:id xml:space="preserve">Jz</ml:id>
									<ml:id xml:space="preserve">x0</ml:id>
									<ml:id xml:space="preserve">y0</ml:id>
									<ml:id xml:space="preserve">z0</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:program>
								<ml:for>
									<ml:id xml:space="preserve">zn</ml:id>
									<ml:range>
										<ml:real>0</ml:real>
										<ml:apply>
											<ml:minus/>
											<ml:id xml:space="preserve">N</ml:id>
											<ml:real>1</ml:real>
										</ml:apply>
									</ml:range>
									<ml:program>
										<ml:for>
											<ml:id xml:space="preserve">y</ml:id>
											<ml:range>
												<ml:real>0</ml:real>
												<ml:apply>
													<ml:minus/>
													<ml:id xml:space="preserve">N</ml:id>
													<ml:real>1</ml:real>
												</ml:apply>
											</ml:range>
											<ml:for>
												<ml:id xml:space="preserve">x</ml:id>
												<ml:range>
													<ml:real>0</ml:real>
													<ml:apply>
														<ml:minus/>
														<ml:id xml:space="preserve">N</ml:id>
														<ml:real>1</ml:real>
													</ml:apply>
												</ml:range>
												<ml:localDefine>
													<ml:apply>
														<ml:indexer/>
														<ml:id xml:space="preserve">Hx_l</ml:id>
														<ml:sequence>
															<ml:id xml:space="preserve">x</ml:id>
															<ml:id xml:space="preserve">y</ml:id>
														</ml:sequence>
													</ml:apply>
													<ml:apply>
														<ml:summation/>
														<ml:lambda>
															<ml:boundVars>
																<ml:id xml:space="preserve">z</ml:id>
															</ml:boundVars>
															<ml:apply>
																<ml:div/>
																<ml:parens>
																	<ml:apply>
																		<ml:minus/>
																		<ml:apply>
																			<ml:mult/>
																			<ml:apply>
																				<ml:indexer/>
																				<ml:id xml:space="preserve">Jy</ml:id>
																				<ml:id xml:space="preserve">z</ml:id>
																			</ml:apply>
																			<ml:parens>
																				<ml:apply>
																					<ml:minus/>
																					<ml:apply>
																						<ml:minus/>
																						<ml:id xml:space="preserve">zn</ml:id>
																						<ml:apply>
																							<ml:div/>
																							<ml:id xml:space="preserve">N</ml:id>
																							<ml:real>2</ml:real>
																						</ml:apply>
																					</ml:apply>
																					<ml:apply>
																						<ml:indexer/>
																						<ml:id xml:space="preserve">z0</ml:id>
																						<ml:id xml:space="preserve">zn</ml:id>
																					</ml:apply>
																				</ml:apply>
																			</ml:parens>
																		</ml:apply>
																		<ml:apply>
																			<ml:mult/>
																			<ml:apply>
																				<ml:indexer/>
																				<ml:id xml:space="preserve">Jz</ml:id>
																				<ml:id xml:space="preserve">z</ml:id>
																			</ml:apply>
																			<ml:parens>
																				<ml:apply>
																					<ml:minus/>
																					<ml:apply>
																						<ml:minus/>
																						<ml:id xml:space="preserve">y</ml:id>
																						<ml:apply>
																							<ml:div/>
																							<ml:id xml:space="preserve">N</ml:id>
																							<ml:real>2</ml:real>
																						</ml:apply>
																					</ml:apply>
																					<ml:apply>
																						<ml:indexer/>
																						<ml:id xml:space="preserve">y0</ml:id>
																						<ml:id xml:space="preserve">zn</ml:id>
																					</ml:apply>
																				</ml:apply>
																			</ml:parens>
																		</ml:apply>
																	</ml:apply>
																</ml:parens>
																<ml:apply>
																	<ml:plus/>
																	<ml:apply>
																		<ml:mult/>
																		<ml:apply>
																			<ml:mult/>
																			<ml:real>4</ml:real>
																			<ml:id xml:space="preserve">π</ml:id>
																		</ml:apply>
																		<ml:apply>
																			<ml:pow/>
																			<ml:parens>
																				<ml:apply>
																					<ml:sqrt/>
																					<ml:apply>
																						<ml:plus/>
																						<ml:apply>
																							<ml:plus/>
																							<ml:apply>
																								<ml:pow/>
																								<ml:parens>
																									<ml:apply>
																										<ml:minus/>
																										<ml:apply>
																											<ml:minus/>
																											<ml:id xml:space="preserve">x</ml:id>
																											<ml:apply>
																												<ml:div/>
																												<ml:id xml:space="preserve">N</ml:id>
																												<ml:real>2</ml:real>
																											</ml:apply>
																										</ml:apply>
																										<ml:apply>
																											<ml:indexer/>
																											<ml:id xml:space="preserve">x0</ml:id>
																											<ml:id xml:space="preserve">z</ml:id>
																										</ml:apply>
																									</ml:apply>
																								</ml:parens>
																								<ml:real>2</ml:real>
																							</ml:apply>
																							<ml:apply>
																								<ml:pow/>
																								<ml:parens>
																									<ml:apply>
																										<ml:minus/>
																										<ml:apply>
																											<ml:minus/>
																											<ml:id xml:space="preserve">y</ml:id>
																											<ml:apply>
																												<ml:div/>
																												<ml:id xml:space="preserve">N</ml:id>
																												<ml:real>2</ml:real>
																											</ml:apply>
																										</ml:apply>
																										<ml:apply>
																											<ml:indexer/>
																											<ml:id xml:space="preserve">y0</ml:id>
																											<ml:id xml:space="preserve">z</ml:id>
																										</ml:apply>
																									</ml:apply>
																								</ml:parens>
																								<ml:real>2</ml:real>
																							</ml:apply>
																						</ml:apply>
																						<ml:apply>
																							<ml:pow/>
																							<ml:parens>
																								<ml:apply>
																									<ml:minus/>
																									<ml:apply>
																										<ml:minus/>
																										<ml:id xml:space="preserve">zn</ml:id>
																										<ml:apply>
																											<ml:div/>
																											<ml:id xml:space="preserve">N</ml:id>
																											<ml:real>2</ml:real>
																										</ml:apply>
																									</ml:apply>
																									<ml:apply>
																										<ml:indexer/>
																										<ml:id xml:space="preserve">z0</ml:id>
																										<ml:id xml:space="preserve">z</ml:id>
																									</ml:apply>
																								</ml:apply>
																							</ml:parens>
																							<ml:real>2</ml:real>
																						</ml:apply>
																					</ml:apply>
																				</ml:apply>
																			</ml:parens>
																			<ml:real>3</ml:real>
																		</ml:apply>
																	</ml:apply>
																	<ml:real>0.0000001</ml:real>
																</ml:apply>
															</ml:apply>
														</ml:lambda>
														<ml:bounds>
															<ml:real>0</ml:real>
															<ml:apply>
																<ml:minus/>
																<ml:id xml:space="preserve">N</ml:id>
																<ml:real>1</ml:real>
															</ml:apply>
														</ml:bounds>
													</ml:apply>
												</ml:localDefine>
											</ml:for>
										</ml:for>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">Hx</ml:id>
												<ml:id xml:space="preserve">zn</ml:id>
											</ml:apply>
											<ml:id xml:space="preserve">Hx_l</ml:id>
										</ml:localDefine>
									</ml:program>
								</ml:for>
								<ml:id xml:space="preserve">Hx</ml:id>
							</ml:program>
						</ml:define>
					</math>
					<rendering item-idref="29"/>
				</region>
				<region region-id="998" left="636" top="1035" width="549" height="159" align-x="726" align-y="1044" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:function>
								<ml:id xml:space="preserve">Hy1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">Jx</ml:id>
									<ml:id xml:space="preserve">Jz</ml:id>
									<ml:id xml:space="preserve">x0</ml:id>
									<ml:id xml:space="preserve">y0</ml:id>
									<ml:id xml:space="preserve">z0</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:program>
								<ml:for>
									<ml:id xml:space="preserve">zn</ml:id>
									<ml:range>
										<ml:real>0</ml:real>
										<ml:apply>
											<ml:minus/>
											<ml:id xml:space="preserve">N</ml:id>
											<ml:real>1</ml:real>
										</ml:apply>
									</ml:range>
									<ml:program>
										<ml:for>
											<ml:id xml:space="preserve">y</ml:id>
											<ml:range>
												<ml:real>0</ml:real>
												<ml:apply>
													<ml:minus/>
													<ml:id xml:space="preserve">N</ml:id>
													<ml:real>1</ml:real>
												</ml:apply>
											</ml:range>
											<ml:for>
												<ml:id xml:space="preserve">x</ml:id>
												<ml:range>
													<ml:real>0</ml:real>
													<ml:apply>
														<ml:minus/>
														<ml:id xml:space="preserve">N</ml:id>
														<ml:real>1</ml:real>
													</ml:apply>
												</ml:range>
												<ml:localDefine>
													<ml:apply>
														<ml:indexer/>
														<ml:id xml:space="preserve">Hy_l</ml:id>
														<ml:sequence>
															<ml:id xml:space="preserve">x</ml:id>
															<ml:id xml:space="preserve">y</ml:id>
														</ml:sequence>
													</ml:apply>
													<ml:apply>
														<ml:summation/>
														<ml:lambda>
															<ml:boundVars>
																<ml:id xml:space="preserve">z</ml:id>
															</ml:boundVars>
															<ml:apply>
																<ml:div/>
																<ml:apply>
																	<ml:neg/>
																	<ml:parens>
																		<ml:apply>
																			<ml:minus/>
																			<ml:apply>
																				<ml:mult/>
																				<ml:apply>
																					<ml:indexer/>
																					<ml:id xml:space="preserve">Jx</ml:id>
																					<ml:id xml:space="preserve">z</ml:id>
																				</ml:apply>
																				<ml:parens>
																					<ml:apply>
																						<ml:minus/>
																						<ml:apply>
																							<ml:minus/>
																							<ml:id xml:space="preserve">zn</ml:id>
																							<ml:apply>
																								<ml:div/>
																								<ml:id xml:space="preserve">N</ml:id>
																								<ml:real>2</ml:real>
																							</ml:apply>
																						</ml:apply>
																						<ml:apply>
																							<ml:indexer/>
																							<ml:id xml:space="preserve">z0</ml:id>
																							<ml:id xml:space="preserve">zn</ml:id>
																						</ml:apply>
																					</ml:apply>
																				</ml:parens>
																			</ml:apply>
																			<ml:apply>
																				<ml:mult/>
																				<ml:apply>
																					<ml:indexer/>
																					<ml:id xml:space="preserve">Jz</ml:id>
																					<ml:id xml:space="preserve">z</ml:id>
																				</ml:apply>
																				<ml:parens>
																					<ml:apply>
																						<ml:minus/>
																						<ml:apply>
																							<ml:minus/>
																							<ml:id xml:space="preserve">x</ml:id>
																							<ml:apply>
																								<ml:div/>
																								<ml:id xml:space="preserve">N</ml:id>
																								<ml:real>2</ml:real>
																							</ml:apply>
																						</ml:apply>
																						<ml:apply>
																							<ml:indexer/>
																							<ml:id xml:space="preserve">x0</ml:id>
																							<ml:id xml:space="preserve">zn</ml:id>
																						</ml:apply>
																					</ml:apply>
																				</ml:parens>
																			</ml:apply>
																		</ml:apply>
																	</ml:parens>
																</ml:apply>
																<ml:apply>
																	<ml:plus/>
																	<ml:apply>
																		<ml:mult/>
																		<ml:apply>
																			<ml:mult/>
																			<ml:real>4</ml:real>
																			<ml:id xml:space="preserve">π</ml:id>
																		</ml:apply>
																		<ml:apply>
																			<ml:pow/>
																			<ml:parens>
																				<ml:apply>
																					<ml:sqrt/>
																					<ml:apply>
																						<ml:plus/>
																						<ml:apply>
																							<ml:plus/>
																							<ml:apply>
																								<ml:pow/>
																								<ml:parens>
																									<ml:apply>
																										<ml:minus/>
																										<ml:apply>
																											<ml:minus/>
																											<ml:id xml:space="preserve">x</ml:id>
																											<ml:apply>
																												<ml:div/>
																												<ml:id xml:space="preserve">N</ml:id>
																												<ml:real>2</ml:real>
																											</ml:apply>
																										</ml:apply>
																										<ml:apply>
																											<ml:indexer/>
																											<ml:id xml:space="preserve">x0</ml:id>
																											<ml:id xml:space="preserve">z</ml:id>
																										</ml:apply>
																									</ml:apply>
																								</ml:parens>
																								<ml:real>2</ml:real>
																							</ml:apply>
																							<ml:apply>
																								<ml:pow/>
																								<ml:parens>
																									<ml:apply>
																										<ml:minus/>
																										<ml:apply>
																											<ml:minus/>
																											<ml:id xml:space="preserve">y</ml:id>
																											<ml:apply>
																												<ml:div/>
																												<ml:id xml:space="preserve">N</ml:id>
																												<ml:real>2</ml:real>
																											</ml:apply>
																										</ml:apply>
																										<ml:apply>
																											<ml:indexer/>
																											<ml:id xml:space="preserve">y0</ml:id>
																											<ml:id xml:space="preserve">z</ml:id>
																										</ml:apply>
																									</ml:apply>
																								</ml:parens>
																								<ml:real>2</ml:real>
																							</ml:apply>
																						</ml:apply>
																						<ml:apply>
																							<ml:pow/>
																							<ml:parens>
																								<ml:apply>
																									<ml:minus/>
																									<ml:apply>
																										<ml:minus/>
																										<ml:id xml:space="preserve">zn</ml:id>
																										<ml:apply>
																											<ml:div/>
																											<ml:id xml:space="preserve">N</ml:id>
																											<ml:real>2</ml:real>
																										</ml:apply>
																									</ml:apply>
																									<ml:apply>
																										<ml:indexer/>
																										<ml:id xml:space="preserve">z0</ml:id>
																										<ml:id xml:space="preserve">z</ml:id>
																									</ml:apply>
																								</ml:apply>
																							</ml:parens>
																							<ml:real>2</ml:real>
																						</ml:apply>
																					</ml:apply>
																				</ml:apply>
																			</ml:parens>
																			<ml:real>3</ml:real>
																		</ml:apply>
																	</ml:apply>
																	<ml:real>0.00000001</ml:real>
																</ml:apply>
															</ml:apply>
														</ml:lambda>
														<ml:bounds>
															<ml:real>0</ml:real>
															<ml:apply>
																<ml:minus/>
																<ml:id xml:space="preserve">N</ml:id>
																<ml:real>1</ml:real>
															</ml:apply>
														</ml:bounds>
													</ml:apply>
												</ml:localDefine>
											</ml:for>
										</ml:for>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">Hy</ml:id>
												<ml:id xml:space="preserve">zn</ml:id>
											</ml:apply>
											<ml:id xml:space="preserve">Hy_l</ml:id>
										</ml:localDefine>
									</ml:program>
								</ml:for>
								<ml:id xml:space="preserve">Hy</ml:id>
							</ml:program>
						</ml:define>
					</math>
					<rendering item-idref="30"/>
				</region>
				<region region-id="999" left="228" top="1221" width="543" height="159" align-x="318" align-y="1230" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:function>
								<ml:id xml:space="preserve">Hz1</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">Jx</ml:id>
									<ml:id xml:space="preserve">Jy</ml:id>
									<ml:id xml:space="preserve">x0</ml:id>
									<ml:id xml:space="preserve">y0</ml:id>
									<ml:id xml:space="preserve">z0</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:program>
								<ml:for>
									<ml:id xml:space="preserve">zn</ml:id>
									<ml:range>
										<ml:real>0</ml:real>
										<ml:apply>
											<ml:minus/>
											<ml:id xml:space="preserve">N</ml:id>
											<ml:real>1</ml:real>
										</ml:apply>
									</ml:range>
									<ml:program>
										<ml:for>
											<ml:id xml:space="preserve">y</ml:id>
											<ml:range>
												<ml:real>0</ml:real>
												<ml:apply>
													<ml:minus/>
													<ml:id xml:space="preserve">N</ml:id>
													<ml:real>1</ml:real>
												</ml:apply>
											</ml:range>
											<ml:for>
												<ml:id xml:space="preserve">x</ml:id>
												<ml:range>
													<ml:real>0</ml:real>
													<ml:apply>
														<ml:minus/>
														<ml:id xml:space="preserve">N</ml:id>
														<ml:real>1</ml:real>
													</ml:apply>
												</ml:range>
												<ml:localDefine>
													<ml:apply>
														<ml:indexer/>
														<ml:id xml:space="preserve">Hz_l</ml:id>
														<ml:sequence>
															<ml:id xml:space="preserve">x</ml:id>
															<ml:id xml:space="preserve">y</ml:id>
														</ml:sequence>
													</ml:apply>
													<ml:apply>
														<ml:summation/>
														<ml:lambda>
															<ml:boundVars>
																<ml:id xml:space="preserve">z</ml:id>
															</ml:boundVars>
															<ml:apply>
																<ml:div/>
																<ml:parens>
																	<ml:apply>
																		<ml:minus/>
																		<ml:apply>
																			<ml:mult/>
																			<ml:apply>
																				<ml:indexer/>
																				<ml:id xml:space="preserve">Jx</ml:id>
																				<ml:id xml:space="preserve">z</ml:id>
																			</ml:apply>
																			<ml:parens>
																				<ml:apply>
																					<ml:minus/>
																					<ml:apply>
																						<ml:minus/>
																						<ml:id xml:space="preserve">y</ml:id>
																						<ml:apply>
																							<ml:div/>
																							<ml:id xml:space="preserve">N</ml:id>
																							<ml:real>2</ml:real>
																						</ml:apply>
																					</ml:apply>
																					<ml:apply>
																						<ml:indexer/>
																						<ml:id xml:space="preserve">y0</ml:id>
																						<ml:id xml:space="preserve">zn</ml:id>
																					</ml:apply>
																				</ml:apply>
																			</ml:parens>
																		</ml:apply>
																		<ml:apply>
																			<ml:mult/>
																			<ml:apply>
																				<ml:indexer/>
																				<ml:id xml:space="preserve">Jy</ml:id>
																				<ml:id xml:space="preserve">z</ml:id>
																			</ml:apply>
																			<ml:parens>
																				<ml:apply>
																					<ml:minus/>
																					<ml:apply>
																						<ml:minus/>
																						<ml:id xml:space="preserve">x</ml:id>
																						<ml:apply>
																							<ml:div/>
																							<ml:id xml:space="preserve">N</ml:id>
																							<ml:real>2</ml:real>
																						</ml:apply>
																					</ml:apply>
																					<ml:apply>
																						<ml:indexer/>
																						<ml:id xml:space="preserve">x0</ml:id>
																						<ml:id xml:space="preserve">zn</ml:id>
																					</ml:apply>
																				</ml:apply>
																			</ml:parens>
																		</ml:apply>
																	</ml:apply>
																</ml:parens>
																<ml:apply>
																	<ml:plus/>
																	<ml:apply>
																		<ml:mult/>
																		<ml:apply>
																			<ml:mult/>
																			<ml:real>4</ml:real>
																			<ml:id xml:space="preserve">π</ml:id>
																		</ml:apply>
																		<ml:apply>
																			<ml:pow/>
																			<ml:parens>
																				<ml:apply>
																					<ml:sqrt/>
																					<ml:apply>
																						<ml:plus/>
																						<ml:apply>
																							<ml:plus/>
																							<ml:apply>
																								<ml:pow/>
																								<ml:parens>
																									<ml:apply>
																										<ml:minus/>
																										<ml:apply>
																											<ml:minus/>
																											<ml:id xml:space="preserve">x</ml:id>
																											<ml:apply>
																												<ml:div/>
																												<ml:id xml:space="preserve">N</ml:id>
																												<ml:real>2</ml:real>
																											</ml:apply>
																										</ml:apply>
																										<ml:apply>
																											<ml:indexer/>
																											<ml:id xml:space="preserve">x0</ml:id>
																											<ml:id xml:space="preserve">z</ml:id>
																										</ml:apply>
																									</ml:apply>
																								</ml:parens>
																								<ml:real>2</ml:real>
																							</ml:apply>
																							<ml:apply>
																								<ml:pow/>
																								<ml:parens>
																									<ml:apply>
																										<ml:minus/>
																										<ml:apply>
																											<ml:minus/>
																											<ml:id xml:space="preserve">y</ml:id>
																											<ml:apply>
																												<ml:div/>
																												<ml:id xml:space="preserve">N</ml:id>
																												<ml:real>2</ml:real>
																											</ml:apply>
																										</ml:apply>
																										<ml:apply>
																											<ml:indexer/>
																											<ml:id xml:space="preserve">y0</ml:id>
																											<ml:id xml:space="preserve">z</ml:id>
																										</ml:apply>
																									</ml:apply>
																								</ml:parens>
																								<ml:real>2</ml:real>
																							</ml:apply>
																						</ml:apply>
																						<ml:apply>
																							<ml:pow/>
																							<ml:parens>
																								<ml:apply>
																									<ml:minus/>
																									<ml:apply>
																										<ml:minus/>
																										<ml:id xml:space="preserve">zn</ml:id>
																										<ml:apply>
																											<ml:div/>
																											<ml:id xml:space="preserve">N</ml:id>
																											<ml:real>2</ml:real>
																										</ml:apply>
																									</ml:apply>
																									<ml:apply>
																										<ml:indexer/>
																										<ml:id xml:space="preserve">z0</ml:id>
																										<ml:id xml:space="preserve">z</ml:id>
																									</ml:apply>
																								</ml:apply>
																							</ml:parens>
																							<ml:real>2</ml:real>
																						</ml:apply>
																					</ml:apply>
																				</ml:apply>
																			</ml:parens>
																			<ml:real>3</ml:real>
																		</ml:apply>
																	</ml:apply>
																	<ml:real>0.0000001</ml:real>
																</ml:apply>
															</ml:apply>
														</ml:lambda>
														<ml:bounds>
															<ml:real>0</ml:real>
															<ml:apply>
																<ml:minus/>
																<ml:id xml:space="preserve">N</ml:id>
																<ml:real>1</ml:real>
															</ml:apply>
														</ml:bounds>
													</ml:apply>
												</ml:localDefine>
											</ml:for>
										</ml:for>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">Hz</ml:id>
												<ml:id xml:space="preserve">zn</ml:id>
											</ml:apply>
											<ml:id xml:space="preserve">Hz_l</ml:id>
										</ml:localDefine>
									</ml:program>
								</ml:for>
								<ml:id xml:space="preserve">Hz</ml:id>
							</ml:program>
						</ml:define>
					</math>
					<rendering item-idref="31"/>
				</region>
				<region region-id="1000" left="6" top="1400.25" width="416.25" height="36" align-x="6" align-y="1410" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<text use-page-width="false" push-down="false" lock-width="true">
						<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">
							<f family="Arial CYR" charset="204">
								<inlineAttr line-through="false">Формулы для Hx2,Hy2, Hz2 определяют составлющие вектора напряженности магнитного поля в плоскости ZOY (т.е. это вид поля сбоку). Получается x матриц (x - секущая </inlineAttr>
							</f>
						</p>
						<p style="Normal" margin-left="0" margin-right="0" text-indent="inherit" text-align="left" list-style-type="inherit" tabs="inherit">
							<f family="Arial CYR" charset="204">
								<inlineAttr line-through="false">плоскость) размером z*y. </inlineAttr>
							</f>
						</p>
					</text>
				</region>
				<region region-id="1001" left="48" top="1473" width="184.5" height="127.5" align-x="92.25" align-y="1482" show-border="false" show-highlight="false" is-protected="true" z-order="0" background-color="inherit" tag="">
					<math optimize="false" disable-calc="false">
						<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
							<ml:function>
								<ml:id xml:space="preserve">Hx2</ml:id>
								<ml:boundVars>
									<ml:id xml:space="preserve">Hx1</ml:id>
								</ml:boundVars>
							</ml:function>
							<ml:program>
								<ml:for>
									<ml:id xml:space="preserve">x</ml:id>
									<ml:range>
										<ml:real>0</ml:real>
										<ml:apply>
											<ml:minus/>
											<ml:id xml:space="preserve">N</ml:id>
											<ml:real>1</ml:real>
										</ml:apply>
									</ml:range>
									<ml:program>
										<ml:for>
											<ml:id xml:space="preserve">z</ml:id>
											<ml:range>
												<ml:real>0</ml:real>
												<ml:apply>
													<ml:minus/>
													<ml:id xml:space="preserve">N</ml:id>
													<ml:real>1</ml:real>
												</ml:apply>
											</ml:range>
											<ml:program>
												<ml:localDefine>
													<ml:id xml:space="preserve">A</ml:id>
													<ml:apply>
														<ml:indexer/>
														<ml:id xml:space="preserve">Hx1</ml:id>
														<ml:id xml:space="preserve">z</ml:id>
													</ml:apply>
												</ml:localDefine>
												<ml:for>
													<ml:id xml:space="preserve">y</ml:id>
													<ml:range>
														<ml:real>0</ml:real>
														<ml:apply>
															<ml:minus/>
															<ml:id xml:space="preserve">N</ml:id>
															<ml:real>1</ml:real>
														</ml:apply>
													</ml:range>
													<ml:localDefine>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">B</ml:id>
															<ml:sequence>
																<ml:id xml:space="preserve">z</ml:id>
																<ml:id xml:space="preserve">y</ml:id>
															</ml:sequence>
														</ml:apply>
														<ml:apply>
															<ml:indexer/>
															<ml:id xml:space="preserve">A</ml:id>
															<ml:sequence>
																<ml:id xml:space="preserve">x</ml:id>
																<ml:id xml:space="preserve">y</ml:id>
															</ml:sequence>
														</ml:apply>
													</ml:localDefine>
												</ml:for>
											</ml:program>
										</ml:for>
										<ml:localDefine>
											<ml:apply>
												<ml:indexer/>
												<ml:id xml:space="preserve">Hx2</ml:id>
												<ml:id xml:space="preserve">x</ml:id>
											</ml:apply>
											<ml:id xml:space="preserve">B</ml:id>
										</ml:localDefine>
									</ml:program>
								</ml:for>
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							<f family="Arial CYR" charset="204">
								<inlineAttr line-through="false">Формулы для Hx3,Hy3, Hz3 определяют составлющие вектора напряженности магнитного поля в плоскости ZOY (т.е. это вид поля сверху).</inlineAttr>
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							<f family="Arial CYR" charset="204">Получается y матриц (y - секущая </f>
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							<f family="Arial CYR" charset="204">плоскость) размером z*x. </f>
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								<ml:apply>
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								<inlineAttr line-through="false">Вычисляется каждая компонента поля x,y,z (2 - означает что вычисляется поле в плоскости Z0Y; A - для проводника A, </inlineAttr>
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								<inlineAttr line-through="false">); Вычисляется суммарное поле для секущей плоскости xs (xs можно изменять и смотреть как изменяется поле в различных сечениях)</inlineAttr>
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							<f family="Arial CYR" charset="204">
								<inlineAttr line-through="false">Сечение плоскость x</inlineAttr>
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								<ml:apply>
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								<inlineAttr line-through="false">Линии напряженности магнитного поля в плоскости Z0Y для проводника А и В (для заданного сечения xs)</inlineAttr>
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								<inlineAttr line-through="false">Сечение плоскость y</inlineAttr>
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