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Weak impact signal detection based on adaptive stochastic resonance with knowledge-based particle swarm optimization

机译:基于自适应随机共振和知识粒子群算法的弱冲击信号检测

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Stochastic resonance is of great importance in the field of signal detection. Suitable system parameters determine the performance of a parameter-induced stochastic resonance detection system. Considering the difficulty of adjusting system parameters and the requirement of real-time detection in the parameter-induced stochastic resonance, knowledge-based particle swarm optimization (KPSO) is proposed to optimize system parameters, which takes the kurtosis index as the fitness function and the property that the impact signal can produce stochastic resonance in a single potential well as the knowledge. Compared with particle swarm optimization (PSO), this algorithm can obtain optimal system parameters more quickly, making energy transfer from the noise to the signal greatly, and produce the best output resonance effect. As a typical large-parameter signal, the impact signal is not satisfied with the stochastic resonance condition apparently. In this paper, we combine the twice sampling with KPSO, realizing weak impact signal detection, and verifying the efficiency and effectiveness of the algorithm.
机译:随机共振在信号检测领域非常重要。合适的系统参数确定参数诱发的随机共振检测系统的性能。考虑到调整系统参数的难度以及参数诱发的随机共振对实时检测的要求,提出了基于知识度的粒子群优化算法(KPSO),以峰度指数为适应度函数,并以峰度指数作为适应度函数。冲击信号可以在单个电位以及知识中产生随机共振的特性。与粒子群优化算法(PSO)相比,该算法可以更快地获得最优系统参数,使能量从噪声到信号的传递大大提高,并产生最佳的输出谐振效果。作为典型的大参数信号,冲击信号显然不能满足随机共振条件。本文将二次采样与KPSO相结合,实现了对弱冲击信号的检测,并验证了算法的有效性和有效性。

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