Laboratory of Chemical and Environmental Engineering (LEQUIA), Institute of the Environment, Universitat de Girona, MªAurelia Capmany, 69, 17003 Girona, Spain.
Advanced Control Systems (SAC) Research Group, Polytechnic University of Catalonia (UPC-BarcelonaTech), Terrassa Campus, Gaia Research Bldg, Rambla Sant Nebridi, 22, 08222 Terrassa, Spain.
Sensors (Basel). 2022 Feb 26;22(5):1857. doi: 10.3390/s22051857.
Anaerobic digestion (AnD) is a process that allows the conversion of organic waste into a source of energy such as biogas, introducing sustainability and circular economy in waste treatment. AnD is an intricate process because of multiple parameters involved, and its complexity increases when the wastes are from different types of generators. In this case, a key point to achieve good performance is optimisation methods. Currently, many tools have been developed to optimise a single AnD plant. However, the study of a network of AnD plants and multiple waste generators, all in different locations, remains unexplored. This novel approach requires the use of optimisation methodologies with the capacity to deal with a highly complex combinatorial problem. This paper proposes and compares the use of three evolutionary algorithms: ant colony optimisation (ACO), genetic algorithm (GA) and particle swarm optimisation (PSO), which are especially suited for this type of application. The algorithms successfully solve the problem, using an objective function that includes terms related to quality and logistics. Their application to a real case study in Catalonia (Spain) shows their usefulness (ACO and GA to achieve maximum biogas production and PSO for safer operation conditions) for AnD facilities.
厌氧消化(AnD)是一种将有机废物转化为沼气等能源的过程,在废物处理中引入了可持续性和循环经济。由于涉及多个参数,AnD 是一个复杂的过程,当废物来自不同类型的产生者时,其复杂性会增加。在这种情况下,实现良好性能的关键是优化方法。目前,已经开发出许多工具来优化单个 AnD 工厂。然而,对来自不同地点的多个 AnD 工厂和多个废物产生者的网络的研究仍未得到探索。这种新方法需要使用具有处理高度复杂组合问题能力的优化方法。本文提出并比较了三种进化算法的使用:蚁群优化(ACO)、遗传算法(GA)和粒子群优化(PSO),它们特别适合这种类型的应用。这些算法成功地解决了问题,使用了一个包含与质量和物流相关术语的目标函数。它们在西班牙加泰罗尼亚的一个实际案例研究中的应用表明了它们在 AnD 设施中的有用性(ACO 和 GA 用于实现最大沼气产量,PSO 用于更安全的操作条件)。