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Using fuzzy self-organising maps for safety critical systems

机译:将模糊自组织映射用于安全关键系统

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This paper defines a type of constrained artificial neural network (ANN) that enables analytical certification arguments whilst retaining valuable performance characteristics. Previous work has defined a safety lifecycle for ANNs without detailing a specific neural model. Building on this previous work, the underpinning of the devised model is based upon an existing neuro-fuzzy system called the fuzzy self-organising map (FSOM). The FSOM is type of 'hybrid' ANN which allows behaviour to be described qualitatively and quantitatively using meaningful expressions. Safety of the FSOM is argued through adherence to safety requirements—derived from hazard analysis and expressed using safety constraints. The approach enables the construction of compelling (product-based) arguments for mitigation of potential failure modes associated with the FSOM. The constrained FSOM has been termed a 'safety critical artificial neural network' (SCANN). The SCANN can be used for non-linear function approximation and allows certified learning and generalisation for high criticality roles. A discussion of benefits for real-world applications is also presented.
机译:本文定义了一种受约束的人工神经网络(ANN),它能够进行分析认证论证,同时保留有价值的性能特征。先前的工作已为ANN定义了安全生命周期,但未详细说明特定的神经模型。在此之前的工作的基础上,所设计模型的基础是基于一种称为模糊自组织图(FSOM)的现有神经模糊系统。 FSOM是“混合” ANN的类型,它允许使用有意义的表达式定性和定量地描述行为。 FSOM的安全性是通过遵守安全要求来争论的,安全要求是根据危害分析得出的,并使用安全约束来表示。该方法可以构造引人注目的(基于产品)参数,以减轻与FSOM相关的潜在故障模式。受约束的FSOM被称为“安全关键人工神经网络”(SCANN)。 SCANN可用于非线性函数逼近,并允许对高关键性角色进行认证的学习和概括。还介绍了实际应用程序的好处。

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