Open Access Open Access  Restricted Access Subscription Access

Revolutionizing System Operation and Maintenance in the Automobile Industry Through Machine Learning Applications


Affiliations
1 Rochester Institute of Technology, United States

The necessity to digitalize the processes in the automobile industry becomes stronger by the day challenging the system operation and maintenance, in such a competitive field. Issues like passive fault identification, routine tasks, and dependency on Standard Operating Procedures (SOPs) describe the current status of a system in operating and maintaining processes used in the automotive industry. To address these challenges, this paper introduces an innovative approach: a machine learning system on operation and maintenance knowledge base for providing optimal solutions based on the automotive industry. More specifically, Scrap crawler is used to gather historical system data and after that, the decision tree algorithm is used to determine the specific insights. The acquired findings are further represented to facilitate comprehension and application of the results to strengthen the operation and maintenance management processes.

Keywords

No Keywords
User
Notifications
Font Size

Abstract Views: 155




  • Revolutionizing System Operation and Maintenance in the Automobile Industry Through Machine Learning Applications

Abstract Views: 155  | 

Authors

Priyank Singh
Rochester Institute of Technology, United States
Tanvi Hungund
Rochester Institute of Technology, United States
Shobhit Kukreti
Rochester Institute of Technology, United States

Abstract


The necessity to digitalize the processes in the automobile industry becomes stronger by the day challenging the system operation and maintenance, in such a competitive field. Issues like passive fault identification, routine tasks, and dependency on Standard Operating Procedures (SOPs) describe the current status of a system in operating and maintaining processes used in the automotive industry. To address these challenges, this paper introduces an innovative approach: a machine learning system on operation and maintenance knowledge base for providing optimal solutions based on the automotive industry. More specifically, Scrap crawler is used to gather historical system data and after that, the decision tree algorithm is used to determine the specific insights. The acquired findings are further represented to facilitate comprehension and application of the results to strengthen the operation and maintenance management processes.

Keywords


No Keywords