Implementation and applications of harvest fleet route planning

Andrés Villa Henriksen
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Abstract

In order to support the growing global population, it is necessary to increase food production efficiency and at the same time reduce its negative environmental impacts. This can be achieved by integrating diverse strategies from different scientific disciplines. As agriculture is becoming more data-driven by the use of technologies such as the Internet of Things, the efficiency in agricultural operations can be optimised in a sustainable manner. Some field operations, such as harvesting, are more complex and have higher potential for improvement than others, as they involve multiple and diverse vehicles with capacity constraints that require coordination. This can be achieved by optimised route planning, which is a combinatorial optimisation problem. Several studies have proposed different approaches to solve the problem. However, these studies have mainly a theoretical computer science perspective and lack the system perspective that covers the practical implementation and applications of optimised route planning in all field operations, being harvesting an important example to focus on. This requires an interdisciplinary approach, which is the aim of this Ph.D. project. The research of this Ph.D. study examined how Internet of Things technologies are applied in arable farming in general, and in particular in optimised route planning. The technology perspective of the reviewing process provided the necessary knowledge to address the physical implementation of a harvest fleet route planning tool that aims to minimise the total harvest time. From the environmental point of view, the risk of soil compaction resulting from vehicle traffic during harvest operations was assessed by comparing recorded vehicle data with the optimised solution of the harvest fleet route planning system. The results showed a reduction in traffic, which demonstrates that these optimisation tools can be part of the soil compaction mitigation strategy of a farm. And from the economic perspective, the optimised route planner of an autonomous field robot was employed to evaluate the economic consequences of altering the route in selective harvesting. The results presented different scenarios where selective harvest was not economically profitable. The results also identified some cases where selective harvest has the potential to become profitable depending on grain price differences and operational costs. In conclusion, these different perspectives to harvest fleet route planning showed the necessity of assessing future implementation and potential applications through interdisciplinarity.
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收获船队航线规划的实施与应用
为了支持不断增长的全球人口,有必要提高粮食生产效率,同时减少其对环境的负面影响。这可以通过整合来自不同科学学科的各种策略来实现。随着物联网等技术的使用越来越多地以数据为驱动,农业运营效率可以以可持续的方式得到优化。有些实地作业,如收获作业,比其他作业更复杂,有更大的改进潜力,因为它们涉及多种不同的车辆,能力有限,需要协调。这可以通过优化路线规划来实现,这是一个组合优化问题。一些研究提出了不同的方法来解决这个问题。然而,这些研究主要是从理论计算机科学的角度出发,缺乏涵盖所有现场作业中优化路线规划的实际实施和应用的系统角度,正在收集一个值得关注的重要例子。这需要跨学科的方法,这也是本博士项目的目的。这项博士研究的研究考察了物联网技术如何在一般的耕地农业中应用,特别是在优化路线规划方面。审查过程的技术角度提供了必要的知识,以解决采收船队路线规划工具的物理实施问题,该工具旨在最大限度地减少总采收时间。从环境的角度来看,通过将记录的车辆数据与收获车队路线规划系统的优化解决方案进行比较,评估收获作业期间车辆交通造成的土壤压实风险。结果显示交通量减少,这表明这些优化工具可以成为农场土壤压实缓解策略的一部分。从经济角度出发,利用优化后的自主田间机器人路线规划器,对选择性采收中改变路线的经济后果进行了评估。结果显示了选择性采收不具有经济效益的不同情况。研究结果还指出,在某些情况下,根据粮食价格差异和运营成本的不同,选择性收获有可能实现盈利。总之,这些不同的角度来收获船队航线规划表明了通过跨学科评估未来实施和潜在应用的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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