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						<b>ДОМАШНИЕ ЗАДАНИЯ</b>
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					<b>по теме</b>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="center" list-style-type="inherit" tabs="inherit">"<f size="14">
						<b>Круглый металлический волновод"</b>
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					<b>Выполнил</b>
					<b>и</b> :ст. гр. 526</p>
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						<b>
							<i>Ву Та Кыонг</i>
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							<i>Карсаков</i>
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						<b>
							<i>Мальцев</i>
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					<b>Проверил :</b>
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					<ml:real>15</ml:real>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">мм<sp count="6"/>- Радиус круглого волновода</p>
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			<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">мм<sp count="7"/>- Длина круглого волновода</p>
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				<ml:define xmlns:ml="http://schemas.mathsoft.com/math30">
					<ml:id xml:space="preserve">λ0</ml:id>
					<ml:real>30</ml:real>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">мм<sp count="7"/>- длина волны</p>
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						<ml:real>5</ml:real>
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							<ml:real>10</ml:real>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">В/м<sp count="8"/>- напряженность электрического поля на оси волновода</p>
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					<ml:id xml:space="preserve">v01</ml:id>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">корень функции Бесселя</p>
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								<ml:real>2</ml:real>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Критическая длина волны типа Е01</p>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Харатеристическое сопротивление волновода для волн типа Е01</p>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">коэффициент фазы(или постоянная распространения)</p>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">поперечное волновое число</p>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">продольное волновое число</p>
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					<b>
						<i>Рассмотрим волны типа Е01 :</i>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">1 . Сечение с плоскостью xOz(ϕ=0)</p>
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				<p style="Normal" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">2 . Сечение с плоскостью xOy(z=0)</p>
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