Using Models of Parallel Specialized Processors to Solve the Problem of Signal Separation

V. A. Zasov
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Abstract

This paper considers models of highly efficient specialized processors used for parallel data processing as part of solving the problem of extracting individual signals from an additive mixture of several signals. The proposed models of recursive, nonrecursive, and regularization-based parallel specialized processors provide versatility in solving the problem of signal separation with various algorithms. An advantage of regularization-based processors is that they make the solution stable under conditions where the parameters of objects exhibit expected uncertainty when the inverse problem of signal separation is ill-posed. This paper presents the results we obtained from an asymptotic analysis of the computational complexity involved. The results identify the time it takes to solve problems by using specialized processors. The paper also identifies the conditions for the efficient use of specialized processors.
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利用并行专用处理器模型解决信号分离问题
本文考虑了用于并行数据处理的高效专用处理器模型,作为解决从多个信号的加性混合中提取单个信号问题的一部分。所提出的递归、非递归和基于正则化的并行专用处理器模型提供了用各种算法解决信号分离问题的通用性。基于正则化的处理器的一个优点是,当信号分离逆问题不适定时,目标参数表现出预期的不确定性时,它们使解稳定。本文给出了我们从计算复杂度的渐近分析中得到的结果。结果确定了使用专用处理器解决问题所需的时间。本文还确定了有效使用专用处理器的条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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