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Simulating exposure-related behaviors using agent-based models embedded with needs-based artificial intelligence

机译:使用基于代理的模型模拟曝光相关行为,嵌入基于需求的人工智能

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Exposure to a chemical is a critical consideration in the assessment of risk, as it adds real-world context to toxicological information. Descriptions of where and how individuals spend their time are important for characterizing exposures to chemicals in consumer products and in indoor environments. Herein we create an agent-based model (ABM) that simulates longitudinal patterns in human behavior. By basing the ABM upon an artificial intelligence (AI) system, we create agents that mimic human decisions on performing behaviors relevant for determining exposures to chemicals and other stressors. We implement the ABM in a computer program called the Agent-Based Model of Human Activity Patterns (ABMHAP) that predicts the longitudinal patterns for sleeping, eating, commuting, and working. We then show that ABMHAP is capable of simulating behavior over extended periods of time. We propose that this framework, and models based on it, can generate longitudinal human behavior data for use in exposure assessments.
机译:暴露于化学物质是对风险评估的批判性考虑因素,因为它增加了毒理学信息的现实世界背景。个人如何以及如何以及如何花费时间的时间对于将风险和室内环境和室内环境中的化学品进行了表征,这是重要的。这里,我们创建了一种基于代理的模型(ABM),其模拟人类行为中的纵向模式。通过基于人工智能(AI)系统的ABM,我们创造了模仿人类决策的代理,就履行了对化学品和其他压力源的曝光的行为。我们在称为代理基于代理的人类活动模式(ABMHAP)模型的计算机程序中实施ABM,其预测睡眠,进食,通勤和工作的纵向模式。然后,我们表明ABMHAP能够在延长的时间段内模拟行为。我们建议该框架和基于它的模型可以生成用于暴露评估的纵向人类行为数据。

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