论文标题
预测维护的电路设计
Circuit Design for Predictive Maintenance
论文作者
论文摘要
工业4.0已成为整个制造业的驱动力。智能系统已使生产率提高30%,并且已证明预测性维护可提供50%的机器停机时间。到目前为止,该解决方案一直基于数据分析,这导致了传感技术和基础架构的扩散,以获取数据采集,传输和处理。工厂运营和自动化的核心是控制和电源工厂设备的电路,创新的电路设计有可能应对许多系统集成挑战。我们提出了一种基于电路级的人工智能解决方案的新电路设计方法,该方法在电路设计过程中集成在控制和校准功能块中,从而提高了每个组件的可预测性和适应性以进行预测性维护。设想这种方法是为了鼓励开发新的EDA工具,例如自动数字阴影生成和产品生命周期模型,这些工具将有助于识别电路参数,以充分定义动态预测和故障检测的操作条件。考虑捕获主控制器的非线性和增益/带宽约束,并确定控制器响应以外的操作条件的变化,考虑了控制循环中补充人工智能块的集成。讨论了有关在OPC统一体系结构和预测维护接口中集成的系统集成主题,从而为数字阴影提供了实时更新,该更新有助于维护物理系统的准确,虚拟复制模型。
Industry 4.0 has become a driver for the entire manufacturing industry. Smart systems have enabled 30% productivity increases and predictive maintenance has been demonstrated to provide a 50% reduction in machine downtime. So far, the solution has been based on data analytics which has resulted in a proliferation of sensing technologies and infrastructure for data acquisition, transmission and processing. At the core of factory operation and automation are circuits that control and power factory equipment, innovative circuit design has the potential to address many system integration challenges. We present a new circuit design approach based on circuit level artificial intelligence solutions, integrated within control and calibration functional blocks during circuit design, improving the predictability and adaptability of each component for predictive maintenance. This approach is envisioned to encourage the development of new EDA tools such as automatic digital shadow generation and product lifecycle models, that will help identification of circuit parameters that adequately define the operating conditions for dynamic prediction and fault detection. Integration of a supplementary artificial intelligence block within the control loop is considered for capturing non-linearities and gain/bandwidth constraints of the main controller and identifying changes in the operating conditions beyond the response of the controller. System integration topics are discussed regarding integration within OPC Unified Architecture and predictive maintenance interfaces, providing real-time updates to the digital shadow that help maintain an accurate, virtual replica model of the physical system.