McAnally Ken, Davey Catherine, White Daniel, Stimson Murray, Mascaro Steven, Korb Kevin
Aerospace Division, Defence Science and Technology Group, Victoria, Australia.
Melbourne School of Psychological Sciences, University of Melbourne.
Cogn Sci. 2018 Sep;42(7):2181-2204. doi: 10.1111/cogs.12636. Epub 2018 Jun 24.
Situation awareness is a key construct in human factors and arises from a process of situation assessment (SA). SA comprises the perception of information, its integration with existing knowledge, the search for new information, and the prediction of the future state of the world, including the consequences of planned actions. Causal models implemented as Bayesian networks (BNs) are attractive for modeling all of these processes within a single, unified framework. We elicited declarative knowledge from two Royal Australian Air Force (RAAF) fighter pilots about the information sources used in the identification (ID) of airborne entities and the causal relationships between these sources. This knowledge was represented in a BN (the declarative model) that was evaluated against the performance of 19 RAAF fighter pilots in a low-fidelity simulation. Pilot behavior was well predicted by a simple associative model (the behavioral model) with only three attributes of ID. Search for information by pilots was largely compensatory and was near-optimal with respect to the behavioral model. The average revision of beliefs in response to evidence was close to Bayesian, but there was substantial variability. Together, these results demonstrate the value of BNs for modeling human SA.
态势感知是人为因素中的一个关键概念,它源于态势评估(SA)过程。态势评估包括对信息的感知、将其与现有知识相结合、寻找新信息以及预测世界的未来状态,包括计划行动的后果。作为贝叶斯网络(BNs)实现的因果模型对于在单个统一框架内对所有这些过程进行建模很有吸引力。我们从两名澳大利亚皇家空军(RAAF)战斗机飞行员那里获取了关于在空中识别(ID)实体时所使用的信息来源以及这些来源之间因果关系的陈述性知识。这些知识被表示在一个贝叶斯网络(陈述性模型)中,并根据19名澳大利亚皇家空军战斗机飞行员在低逼真度模拟中的表现进行评估。飞行员的行为通过一个仅具有识别三个属性的简单关联模型(行为模型)得到了很好的预测。飞行员对信息的搜索在很大程度上是补偿性的,并且相对于行为模型接近最优。响应证据时信念的平均修正接近贝叶斯方法,但存在很大的变异性。这些结果共同证明了贝叶斯网络在模拟人类态势感知方面的价值。