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				<p style="Нормаль" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">3 ввод вручную</p>
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				<p style="Нормаль" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">КСВ по входу относительно Rg</p>
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				<p style="Нормаль" margin-left="inherit" margin-right="inherit" text-indent="inherit" text-align="inherit" list-style-type="inherit" tabs="inherit">Подавление при запитке генератором напряжения с Rвых=Rg</p>
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