Industrial processes rely on sensory data for decision-making processes, risk assessment, and performance evaluation. Extracting actionable insights from the collected data calls for an infrastructure that can ensure the dissemination of trustworthy data. For the physical data to be trustworthy, it needs to be cross-validated through multiple sensor sources with overlapping fields of view. Cross-validated data can then be stored on blockchain, to maintain its integrity and trustworthiness. Once trustworthy data is recorded on the blockchain, product lifecycle events can be fed into data-driven systems for process monitoring, diagnostics, and optimized control. In this regard, Digital Twins (DTs) can be leveraged in industry to draw intelligent conclusions from data by identifying the faults and recommending precautionary measures ahead of critical events. Empowering DTs with blockchain in industrial use-cases targets key challenges of disparate data repositories, untrustworthy data dissemination, and the need for predictive maintenance. In this survey, while highlighting the key benefits of using blockchain-based DTs, we present a comprehensive review of the state-of-the-art research results for blockchain-based DTs. Based on the current research trends, we discuss in detail a framework for trustworthy blockchain-based DTs. Furthermore, we also discuss current and future research and deployment challenges along with essential measures that must be taken by the blockchain-based DTs.
翻译:工业流程依靠感官数据进行决策、风险评估和绩效评估。从所收集的数据中提取可操作的洞察力需要有一个能够确保传播可靠数据的基础设施。为使物理数据值得信赖,需要通过多传感器来源和相互重叠的视野领域交叉验证。交叉验证的数据可以储存在链条上,以保持其完整性和可信度。一旦在链条上记录了可靠数据,产品生命周期活动就可以被输入数据驱动的系统,用于流程监测、诊断和优化控制。在这方面,数字双胞胎(DTs)可以在行业中被利用,通过查明缺陷和在重大事件之前建议预防措施,从数据中得出明智的结论。赋予工业使用案例中具有阻隔链的DT(DT)能力,针对不同数据储存库、不可信数据传播的关键挑战,以及预测性维护的必要性。在本次调查中,在强调使用基于链条的DT(DT)系统的主要好处的同时,我们也可以在基于链路的供应链上进行全面审查。我们讨论当前基于链条的DT(DT)系统部署基本挑战。