Improved Multi-objective Particle Swarm Optimization in Software Engineering Supervision

Ping Yue, Zhiguo Wang
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Abstract

In the 21st century, the software industry has achieved great development. The development complexity and volume of software projects are also continuously increasing. The design of software engineering supervision network plans is becoming increasingly important. In response to the poor optimization performance and poor convergence and distribution of optimal solutions in existing network planning algorithms, the Pareto optimal solution set construction method, global extremum selection method, and fitness value determination method of multi-objective particle swarm optimization algorithm are improved to enhance the convergence and distribution of the algorithm. Traditional methods only optimize one or two objectives of network planning, resulting in inconsistency with actual engineering. A multi-objective model based on resources, duration, cost, and quality is established for comprehensive optimization. Based on the results, the Pareto optimal solution curves obtained by the proposed algorithm on three classic test functions are consistent with the actual theoretical Pareto frontier curves. The proposed method is applied to engineering project examples. 10 solutions that meet the schedule requirements are obtained. Most engineering projects have a quality of over 80%, which verifies the practicality of the algorithm. The algorithm has achieved good results in optimizing engineering quality. Therefore, this model has the ability to consider various indicators such as resources and costs to obtain software engineering quality improvement plans. It has certain application potential.
软件工程监理中的改进型多目标粒子群优化技术
21 世纪,软件产业取得了长足的发展。软件工程的开发复杂性和工作量也在不断增加。软件工程监理网络计划的设计变得越来越重要。针对现有网络规划算法优化性能差、最优解收敛性和分布性差的问题,改进了多目标粒子群优化算法的帕累托最优解集构建方法、全局极值选择方法和适度值确定方法,提高了算法的收敛性和分布性。传统方法只能优化网络规划的一个或两个目标,导致与实际工程不符。建立了基于资源、工期、成本和质量的多目标模型,进行综合优化。结果表明,所提算法在三个经典测试函数上得到的帕累托最优解曲线与实际理论上的帕累托前沿曲线一致。将所提方法应用于工程项目实例。得到了 10 个满足进度要求的解决方案。大多数工程项目的质量超过 80%,这验证了算法的实用性。该算法在优化工程质量方面取得了良好的效果。因此,该模型能够考虑资源、成本等多种指标,获得软件工程质量改进方案。具有一定的应用潜力。
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