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<?xml-stylesheet type="text/xsl" href="https://community.element14.com/cfs-file/__key/system/syndication/rss.xsl" media="screen"?><rss version="2.0" xmlns:dc="http://purl.org/dc/elements/1.1/"><channel><title>LMS算法的频域快速实现</title><link>https://community.element14.com/technologies/wireless/w/documents/23293/lms</link><description /><dc:language>en-US</dc:language><generator>Telligent Community 12</generator><item><title>LMS算法的频域快速实现</title><link>https://community.element14.com/technologies/wireless/w/documents/23293/lms</link><pubDate>Tue, 09 Nov 2021 16:47:01 GMT</pubDate><guid isPermaLink="false">93d5dcb4-84c2-446f-b2cb-99731719e767:04e92c7e-bf58-4a36-a50b-523210f19b9c</guid><dc:creator>sophie0love</dc:creator><comments>https://community.element14.com/technologies/wireless/w/documents/23293/lms#comments</comments><description>Current Revision posted to Documents by sophie0love on 11/9/2021 4:47:01 PM&lt;br /&gt;
&lt;p style="margin:0;"&gt;推导了一种替代时域LMS算法的快速频域算法(FLMS),并对其在语音噪声抵消中的应用进行了计算机仿真.计算机仿真的结果证明:它在自适应滤波器权数超过64时,运算量较时域LMS算法有大幅度的下降,但保持了与时域LMS算法相同的收敛速度.同时对算法的局限性和应用范围进行了讨论. &lt;/p&gt;
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