Examining a generic streaming architecture for smart manufacturing's Big data processing in Anomaly detection: A review and a proposal

Journal Title: International Journal of Experimental Research and Review - Year 2023, Vol 30, Issue 1

Abstract

The smart manufacturing industry has witnessed a rapid increase in data generation due to the integration of sensors, IoT devices, and other advanced technologies. With this huge amount of data, the need for efficient data processing methods becomes critical for identifying anomalies in real-time. With the rise of Industry 4.0 practices, digitally enabled manufacturing units are shifting their focus towards Smart Manufacturing paradigm for better productivity, throughput and increased business volume. Traditionally digital manufacturing units have considered different AI approaches like Neural Network, Statistical Methods, Deep Learning etc. to detect and predict anomalies in their production lines. But with the Smart Manufacturing ecosystem, a manufacturing unit must integrate manufacturing intelligence in real-time across entire production lines through sensor data of IOT devices. Hence the traditional anomaly detection systems fall short to respond well, under the changed scenario, where large volumes of unstructured and varied types of data are being generated at high velocity, to be processed at (soft) real time. The article reviews the current state-of-the-art in big data processing for anomaly detection in smart manufacturing. The review covers various aspects such as data collection, data processing, anomaly detection, and real-time monitoring. The current paper also proposes a novel stateful data streaming computational model for big data processing in smart manufacturing units which conceptually lays the foundation on top of which any discrete anomaly detection engine would be able to work. The proposed architecture has several benefits, including its ability to handle the large volume, velocity, and variety of data generated in smart manufacturing. The architecture can be applied to various smart manufacturing applications, including predictive maintenance, quality control, and supply chain optimization. It is expected that this proposed architecture will pave the way for the development of more efficient and effective smart manufacturing systems in the future.

Authors and Affiliations

Milton Samadder, Anup Kumar Barman, Alok Kumar Roy

Keywords

Related Articles

Assessment of Micronucleation and Abnormal Nucleation in the Peripheral Erythrocytes of the Fish Mystus gulio of Hooghly River Downstream as per Seasonal Variation

The aim of the study was to identify the frequencies of micro nucleations (MN) and nuclear abnormalities (NAs) in the peripheral erythrocytes of fish (Mystus gulio Ham. – Buch.) inhabiting downstream at three locations o...

Graphene: the magic carbon derived biological weapon for human welfare

Graphene plays an etiologic role for the new edge drug designing in the area of therapeutic management of myriads of diseases. Several researchers have experimentally validated the use of graphene and its derivative eith...

An Improved Power Quality in a Renewable Energy-based Microgrid System Using Adaptive Hybrid UPQC Control Strategy

Due to its ability to integrate renewable energy, improve energy efficiency, and fortify the power system's resilience, microgrids are widely used as regional energy systems. But these advantages do have certain drawback...

Effect of aroma on foraging behaviour of Drosophila sp. : An experimental approach

Aromatic compounds play an important role to switch on/off the chemosensory based signalling pathway related to physiological functioning and behavioural strategies of organisms. Plants or plant products serve as a natur...

Meta Heuristic Algorithm Based Novel Dstatcom Architecture for Power Quality Improvement

Electric utility systems are increasingly favoured as local energy systems due to their ability to integrate renewable energy, improve energy efficiency, and enhance the resilience of the power grid. However, while these...

Download PDF file
  • EP ID EP715443
  • DOI https://doi.org/10.52756/ijerr.2023.v30.019
  • Views 22
  • Downloads 0

How To Cite

Milton Samadder, Anup Kumar Barman, Alok Kumar Roy (2023). Examining a generic streaming architecture for smart manufacturing's Big data processing in Anomaly detection: A review and a proposal. International Journal of Experimental Research and Review, 30(1), -. https://europub.co.uk/articles/-A-715443