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MATLAB工程仿真与应用30例源代码

于 2020-12-05 发布
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结合工程应用的广泛性和集中性,将全书分为控制、通信、电力电子、结构、热、图像和逻辑七大部分,每一部分通过4~6个实例讲述MATLAB在某一个特定领域的工程应用。

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