基于神经网络的在线自适应系统新颖性检测

Yan Liu, B. Cukic, Edgar Fuller, S. Gururajan, S. Yerramalla
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引用次数: 4

摘要

在复杂的计算系统中加入受生物学启发的软计算系统(如神经网络)的吸引力在于它们能够应对不断变化的环境。不幸的是,持续的变化会导致不确定性,从而限制了常规验证和确认(V&V)技术的适用性,以确保此类系统的可靠性能。在系统输入层,新的数据可能导致不稳定的学习行为,这可能导致系统故障。因此,必须在系统部署之前对输入层的变化进行观察、诊断、适应和充分理解。此外,在系统输出层,也需要在系统运行过程中很好地分析和检测神经网络预测中存在的不确定性/新颖性。我们的研究使用两种不同的方法解决了这两层的新颖性检测问题。我们使用统计学习工具,支持向量数据描述(SVDD)作为单类分类器来检查进入自适应组件的数据,并检测可能导致系统功能突然变化的不可预见的模式。在输出层,我们定义了一个类似于信度的度量,即有效性指标。有效性指标反映了与每个输出相关联的新颖性程度,因此可用于执行系统有效性检查。仿真结果表明,两种技术都能有效地检测异常事件,并以接近实时的方式提供验证推断。
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Novelty detection for a neural network-based online adaptive system
The appeal of including biologically inspired soft computing systems such as neural networks in complex computational systems is in their ability to cope with a changing environment. Unfortunately, continual changes induce uncertainty that limits the applicability of conventional verification and validation (V&V) techniques to assure the reliable performance of such systems. At the system input layer, novel data may cause unstable learning behavior, which may contribute to system failures. Thus, the changes at the input layer must be observed, diagnosed, accommodated and well understood prior to system deployment. Moreover, at the system output layer, the uncertainties/novelties existing in the neural network predictions also need to be well analyzed and detected during system operation. Our research tackles the novelty detection problem at both layers using two different methods. We use a statistical learning tool, support vector data description (SVDD), as a one-class classifier to examine the data entering the adaptive component and detect unforeseen patterns that may cause abrupt system functionality changes. At the output layer, we define a reliability-like measure, the validity index. The validity index reflects the degree of novelty associated with each output and thus can be used to perform system validity checks. Simulations demonstrate that both techniques effectively detect unusual events and provide validation inferences in a near-real time manner.
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