一种带有状态测量、替换突变、汉明距离计算和交换算子的改进模拟卡尔曼滤波器优化器

Suhazri Amrin Rahmad, Z. Ibrahim, Z. Yusof
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摘要

模拟卡尔曼滤波(SKF)是一种基于卡尔曼滤波框架的种群优化算法。SKF中的每个代理都被视为一个卡尔曼滤波器。SKF利用卡尔曼滤波过程,包括预测、测量和估计,以确定全局最优。然而,SKF只能在数值搜索空间中操作。文献中已经使用了许多方法和修改,以使数值元启发式算法能够在离散搜索空间中运行。本文利用突变和汉明距离技术对SKF中的测量和估计进行了改进,以适应离散搜索空间。改进后的算法称为离散模拟卡尔曼滤波优化器(DSKFO)。此外,DSKFO算法将交换算子作为扩展,改进了求解旅行商问题(TSP)的方法。将DSKFO算法与其他四种组合SKF算法进行比较,结果均优于它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Modified Simulated Kalman Filter Optimizer with State Measurement, Substitution Mutation, Hamming Distance Calculation, and Swap Operator
The simulated Kalman filter (SKF) is an algorithm for population-based optimization based on the Kalman filter framework. Each agent in SKF is treated as a Kalman filter. The SKF utilizes a Kalman filter process that includes prediction, measurement, and estimation to determine the global optimum. However, the SKF can only operate in the numerical search space. Numerous approaches and modifications have been used in the literature to enable numerical meta-heuristic algorithms to operate in a discrete search space. This paper presents modifications to measurement and estimation in the SKF by utilizing mutation and Hamming distance technique to accommodate the discrete search space. The modified algorithm is called Discrete Simulated Kalman Filter Optimizer (DSKFO). Additionally, the DSKFO algorithm incorporates the swap operator as an extension to improve the solution in solving the travelling salesman problem (TSP). The DSKFO algorithm was compared against four other combinatorial SKF algorithms and outperformed them all.
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