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Integrating forecasting in metaheuristic methods to solve dynamic routing problems: Evidence from the logistic processes of tuna vessels

机译:将预测与元启发式方法集成以解决动态路由问题:金枪鱼船的物流过程的证据

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摘要

The multiple Traveling Salesman Problem (mTSP) is a widespread phenomenon in real-life scenarios, and in fact it has been addressed from multiple perspectives in recent decades. However, mTSP in dynamic circumstances entails a greater complexity that recent approaches are still trying to grasp. Beyond time windows, capacity and other parameters that characterize the dynamics of each scenario, moving targets is one of the underdeveloped issues in the field of mTSP. The approach of this paper harnesses a simple prediction method to prove that integrating forecasting within a metaheuristic evolutionary-based method, such as genetic algorithms, can yield better results in a dynamic scenario than their simple non-predictive version. Real data is used from the retrieval of Fish Aggregating Devices (FADs) by tuna vessels in the Indian Ocean. Based on historical data registered by the GPS system of the buoys attached to the devices, their trajectory is firstly forecast to feed subsequently the functioning of a genetic algorithm that searches for the optimal route of tuna vessels in terms of total distance traveled. Thus, although valid for static cases and for the Vehicle Routing Problem (VRP), the main contribution of this method over existing literature lies in its application as a global search method to solve the multiple TSP with moving targets in many dynamic real-life optimization problems.
机译:多重旅行推销员问题(mTSP)在现实生活中是一个普遍存在的现象,实际上,最近几十年来已从多个角度解决了这个问题。但是,在动态情况下的mTSP带来了更大的复杂性,而最新的方法仍在试图解决这一问题。除了时间窗口,容量和表征每种情况动态的其他参数外,移动目标也是mTSP领域未开发的问题之一。本文的方法利用一种简单的预测方法来证明,将预测集成到基于元启发式进化的方法(例如遗传算法)中,在动态场景中比其简单的非预测性方法能产生更好的结果。实际数据是通过印度洋金枪鱼船从鱼类聚集设备(FAD)检索中获得的。根据GPS系统所附着的浮标的历史数据,首先预测它们的轨迹,以随后提供遗传算法的功能,该遗传算法根据总的行进距离搜索金枪鱼船的最佳路线。因此,尽管对于静态情况和车辆路径问题(VRP)有效,但该方法对现有文献的主要贡献在于其作为全局搜索方法的应用,在许多动态现实生活优化中用于解决带有运动目标的多个TSP问题。

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