Autonomous science platforms and question-asking machines

K. Knuth, Julian L. Center
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引用次数: 6

Abstract

As we become increasingly reliant on remote science platforms, the ability to autonomously and intelligently perform data collection becomes critical. In this paper we view these platforms as question-asking machines and introduce a paradigm based on the scientific method, which couples the processes of inference and inquiry to form a model-based learning cycle. Unlike modern autonomous instrumentation, the system is not programmed to collect data directly, but instead, is programmed to learn based on a set of models. Computationally, this learning cycle is implemented in software consisting of a Bayesian probability-based inference engine coupled to an entropy-based inquiry engine. Operationally, a given experiment is viewed as a question, whose relevance is computed using the inquiry calculus, which is a natural order-theoretic generalization of information theory. In simple cases, the relevance is proportional to the entropy. This data is then analyzed by the inference engine, which updates the state of knowledge of the instrument. This new state of knowledge is then used as a basis for future inquiry as the system continues to learn. This paper will introduce the learning methodology, describe its implementation in software, and demonstrate the process with a robotic explorer that autonomously and intelligently performs data collection to solve a search-and-characterize problem.
自主科学平台和提问机器
随着我们越来越依赖远程科学平台,自主和智能执行数据收集的能力变得至关重要。在本文中,我们将这些平台视为提问机器,并引入了一种基于科学方法的范式,该范式将推理和探究过程结合起来,形成了一个基于模型的学习周期。与现代自主仪器不同,该系统没有直接收集数据的编程,而是根据一组模型进行编程学习。在计算上,这个学习周期是在软件中实现的,该软件由一个基于贝叶斯概率的推理引擎和一个基于熵的查询引擎组成。在操作上,一个给定的实验被视为一个问题,它的相关性是用问询演算来计算的,问询演算是信息论的自然有序理论推广。在简单的情况下,相关性与熵成正比。然后,推理引擎对这些数据进行分析,从而更新仪器的知识状态。随着系统继续学习,这种新的知识状态将被用作未来探究的基础。本文将介绍学习方法,描述其在软件中的实现,并演示机器人探索者的过程,该过程自主智能地执行数据收集以解决搜索和特征问题。
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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