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A compact neuromorphic architecture with dynamic routing to efficiently simulate the FXECAP-L algorithm for real-time active noise control

机译:具有动态路由的紧凑型神经形态架构,以有效地模拟FXECAP-L算法进行实时有源噪声控制

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In this work, we introduce, for the first time, the design of a compact neuromorphic architecture to efficiently support a filtered-x error-coded affine projection-like (FXECAP-L) algorithm that is based on affine projection (AP) algorithms for active noise cancellation (ANC) in an acoustic duct. To date, few practical ANC implementations have used AP algorithms because of their high computational complexity, despite providing fast convergence speeds. One of the main factors that increases their computational complexity is linked to the dimensions of the matrix used in the AP algorithm's computations. Evidently, the largest dimensions of the matrix increase the convergence speed of the AP algorithms by paying a penalty in terms of area consumption. However, convergence speed is crucial in ANC applications since this factor determines the speed at which the noise is canceled. Recently, an FXECAP-L algorithm with evolving order has been proposed to dynamically reduce the dimensions of the matrix by maintaining the convergence speed of AP algorithms. Here, we propose a compact neuromorphic architecture with a dynamic routing mechanism to efficiently implement the evolutionary method of the FXECAP-L algorithm by creating a virtual matrix, whose dimensions can be modified over the filter processing. In this way, we avoid spending a large amount of memory to save the largest matrix elements. In addition, the inclusion of the dynamic routing mechanism in the proposed neuromorphic architecture has allowed us to guarantee low area consumption since the neuromorphic architecture is capable of simulating different adaptive structures without modifying its structure. Here, the neuromorphic architecture has been configured as the system identification and ANC controller for practical noise cancellation in an acoustic duct. Our results have demonstrated that the combination of the properties of the FXECAP-L algorithm and the implementation techniques generate a versatile signal processing development tool that can be used in practical real-time ANC applications. (C) 2020 Elsevier B.V. All rights reserved.
机译:在这项工作中,我们首次介绍了紧凑的神经形式架构的设计,以有效地支持基于仿射投影(AP)算法的滤波器X错误编码仿射投影(FXECAP-L)算法声管中的主动噪声消除(ANC)。迄今为止,尽管提供了快速收敛速度,但很少有实用的ANC实现使用AP算法。增加其计算复杂性的主要因素之一与AP算法计算中使用的矩阵的尺寸相关联。显然,基质的最大尺寸通过在面积消耗方面支付惩罚来增加AP算法的收敛速度。然而,收敛速度在ANC应用中至关重要,因为该因子确定噪声被取消的速度。最近,已经提出了一种具有不断变化顺序的FXECAP-L算法来通过维持AP算法的收敛速度来动态降低矩阵的尺寸。这里,我们提出了一种紧凑的神经形态架构,具有动态路由机制来通过创建虚拟矩阵有效地实现FXECAP-L算法的进化方法,其尺寸可以通过滤波处理来修改。通过这种方式,我们避免花费大量内存来保存最大的矩阵元素。此外,在所提出的神经形状架构中包含动态路由机制使我们能够保证低面积消耗,因为神经形态架构能够模拟不同的自适应结构而不修改其结构。这里,神经形态架构已经被配置为系统识别和ANC控制器,用于声管中的实际噪声消除。我们的结果表明,FXECAP-L算法的性质和实现技术的组合生成了可以在实际实时ANC应用中使用的多功能信号处理开发工具。 (c)2020 Elsevier B.V.保留所有权利。

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