School of Information Environment, Tokyo Denki University, 2-1200 Muzai Gakuendai Inzai, Chiba, 270-1382, Japan.
Sensors (Basel). 2012;12(1):632-49. doi: 10.3390/s120100632. Epub 2012 Jan 9.
This paper proposes a methodology for sensor data interpretation that can combine sensor outputs with contexts represented as sets of annotated business rules. Sensor readings are interpreted to generate events labeled with the appropriate type and level of uncertainty. Then, the appropriate context is selected. Reconciliation of different uncertainty types is achieved by a simple technique that moves uncertainty from events to business rules by generating combs of standard Boolean predicates. Finally, context rules are evaluated together with the events to take a decision. The feasibility of our idea is demonstrated via a case study where a context-reasoning engine has been connected to simulated heartbeat sensors using prerecorded experimental data. We use sensor outputs to identify the proper context of operation of a system and trigger decision-making based on context information.
本文提出了一种传感器数据解释方法,该方法可以将传感器输出与表示为带注释业务规则集的上下文结合起来。传感器读数被解释为生成带有适当类型和不确定性水平的事件标签。然后,选择适当的上下文。通过生成标准布尔谓词的组合,从事件到业务规则移动不确定性,从而实现不同不确定性类型的协调。最后,结合事件评估上下文规则以做出决策。通过一个案例研究证明了我们的想法的可行性,其中使用预录的实验数据将上下文推理引擎连接到模拟心跳传感器。我们使用传感器输出来识别系统的正确操作上下文,并根据上下文信息触发决策。