Pipeline Network Optimization using Hybrid Algorithm between Simulated Annealing and Genetic Algorithms

Parizal Hidayatullah, I. Irwansyah, Q. Aini, Bulqis Nebulla Syechah
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引用次数: 1

Abstract

The pipeline network is one of the most complex optimization problems consisting of several elements: reservoirs, pipes, valves, etc. The pipeline network is designed to deliver water to consumers by considering the demand and adequate pressure on the water pipe network. The main problem in designing reliable pipelines is the cost. The amount of cost that most influences the design of pipelines is the diameter of the pipe used. Therefore, this study aims to combine (hybrid) simulated annealing algorithm with genetic algorithm to optimize water pipe networks. The simulated annealing algorithm is the main algorithm in finding the optimal cost.Meanwhile, the genetic algorithm will assist in the pipeline update process using the roulette wheel selection. Simulation data is used to test the hybrid algorithm performance compared to the standard simulated annealing algorithm. The results show that the simulated annealing hybrid algorithm is able to get a more optimal cost in designing a water pipe network compared to the standard simulated annealing algorithm. Keywords: Optimization, Epanet 2.0, Simulated Annealing, and Genetic Algorithm
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基于模拟退火和遗传算法的管道网络优化
管网是最复杂的优化问题之一,它由储层、管道、阀门等要素组成。管网的设计是考虑到供水管网的需求和足够的压力,将水输送给消费者。设计可靠管道的主要问题是成本。对管道设计影响最大的成本是所用管道的直径。因此,本研究旨在将(混合)模拟退火算法与遗传算法相结合,对供水管网进行优化。模拟退火算法是寻找最优成本的主要算法。同时,遗传算法将使用轮盘赌轮盘选择辅助管道更新过程。通过仿真数据与标准模拟退火算法进行比较,验证了混合算法的性能。结果表明,与标准模拟退火算法相比,模拟退火混合算法能够获得更优的管网设计成本。关键词:优化,Epanet 2.0,模拟退火,遗传算法
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