一种用于甘蔗种植者操作决策建模的自适应、概率、认知代理体系结构

Q3 Social Sciences
C. S. Price, Deshendran Moodley, A. Pillay, Gavin Rens
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引用次数: 0

摘要

在动态、部分可观测和随机环境中建立代理的计算模型是具有挑战性的。我们提出了一个甘蔗种植者日常决策的认知计算模型来检验甘蔗供应链的复杂性。种植者根据不确定的天气预报做出决定;甘蔗干燥;不可预见的紧急情况;以及工厂出人意料地要求交付不同数量的甘蔗。信念-欲望-意图(BDI)体系结构已被用于对包括农业在内的许多领域的认知主体进行建模。然而,这种体系结构的典型实现已经象征性地表示了信念,因此不确定的信念通常不会得到满足。在这里,我们展示了BDI架构,通过动态决策网络(DDN)进行了增强,可以适当地对甘蔗种植者代理的重复日常决策进行建模。使用两个复杂的场景,我们证明了代理人选择了适当的意图,并建议种植者应该如何自适应和主动地行动以实现他的目标。此外,我们还提供了在BDI体系结构中使用DDN的映射。该体系结构可用于在基于代理的模拟中对甘蔗种植者代理进行建模。DDN在BDI架构中的使用映射使这项工作能够应用于其他领域,用于在部分可观察、随机和动态环境中建模代理的重复决策
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adaptive, probabilistic, cognitive agent architecture for modelling sugarcane growers’ operational decision-making
Building computational models of agents in dynamic, partially observable and stochastic environments is challenging. We propose a cognitive computational model of sugarcane growers’ daily decision-making to examine sugarcane supply chain complexities. Growers make decisions based on uncertain weather forecasts; cane dryness; unforeseen emergencies; and the mill’s unexpected call for delivery of a different amount of cane. The Belief-Desire-Intention (BDI) architecture has been used to model cognitive agents in many domains, including agriculture. However, typical implementations of this architecture have represented beliefs symbolically, so uncertain beliefs are usually not catered for. Here we show that a BDI architecture, enhanced with a dynamic decision network (DDN), suitably models sugarcane grower agents’ repeated daily decisions. Using two complex scenarios, we demonstrate that the agent selects the appropriate intention, and suggests how the grower should act adaptively and proactively to achieve his goals. In addition, we provide a mapping for using a DDN in a BDI architecture. This architecture can be used for modelling sugarcane grower agents in an agent-based simulation. The mapping of the DDN’s use in the BDI architecture enables this work to be applied to other domains for modelling agents’ repeated decisions in partially observable, stochastic and dynamic environments
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来源期刊
South African Computer Journal
South African Computer Journal Social Sciences-Education
CiteScore
1.30
自引率
0.00%
发文量
10
审稿时长
24 weeks
期刊介绍: The South African Computer Journal is specialist ICT academic journal, accredited by the South African Department of Higher Education and Training SACJ publishes research articles, viewpoints and communications in English in Computer Science and Information Systems.
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