基于高效粒子群优化的PID自整定的硬件实现

Chanon Khongprasongsiri, Punyapat Areerob, S. Boonto, Wasanchai Vongsantivanich
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引用次数: 0

摘要

目前,许多智能控制系统都采用了自动整定的概念,特别是在比例积分导数(PID)控制器中。此外,越来越多的传感器和执行器打破了传统的计算系统,该系统资源有限,难以满足时序要求。提出了一种基于粒子群优化的PID自整定的硬件实现方法,该方法采用粒子群和变量并行结构,使延时最小化。结果表明,与传统的微处理器相比,该硬件的性能分别提高了1000倍和800倍。从评价过程来看,与传统PID相比,该方法的性能和资源利用率都令人满意。
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Hardware Implementation of PID Autotuning with Efficient Particle Swarm Optimization
Severa1 intelligent control systems these days are utilized by the concept of automatically tuning, especially in proportional-integral-derivative (PID) controller. Furthermore, increasing sensors and actuators disrupt the conventional computing system, which has limited resources and is difficult to meet the timing requirement. This paper develops a hardware implementation of PID auto-tuning based on the particle swarm optimization (PSO) with the parallel architecture of particles and variables so that latency is heuristically minimal. The result shows that the proposed hardware performs 1000x and 800x compared to conventional microprocessors. From the evaluation process, performance and resource utilization are found to be satisfactory compared to conventional PID.
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