Anomaly and cyber fraud detection in pipelines and supply chains for liquid fuels
Alinne Beteto,
Vidal Melo,
Jessica Lin,
Marwan Alsultan,
Eduardo Mario Dias,
Elizabeth Korte,
DeAndre A. Johnson (),
Negin Moghadasi (),
Thomas L. Polmateer and
James H. Lambert
Additional contact information
Alinne Beteto: University of Sao Paulo
Vidal Melo: University of Sao Paulo
Jessica Lin: University of Virginia
Marwan Alsultan: King Saud University
Eduardo Mario Dias: University of Sao Paulo
Elizabeth Korte: University of Virginia
DeAndre A. Johnson: University of Virginia
Negin Moghadasi: University of Virginia
Thomas L. Polmateer: University of Virginia
James H. Lambert: University of Virginia
Environment Systems and Decisions, 2022, vol. 42, issue 2, 306-324
Abstract:
Abstract A recent large-scale information disruption of the Colonial Pipeline across the USA has highlighted the cyber vulnerabilities of the supply chains of liquid fuels. Information disruption and associated anomalies have become routine events for critical infrastructure of sociotechnical systems. The logistics systems that support energy commodity supply chains are vulnerable to information threats that evolve throughout the system life cycles. Among the prevalent threats energy supply chains are malicious hacking, fraud, information theft, ransomware, and related irregular activities. Fraud and malicious activity are not new in the supply chains for liquid fuels, though mechanisms and consequences may be changing. This paper addresses information anomalies that are on a spectrum of errors, lost data, fraud, cyber, ransomware and related disruptions to logistics systems that support e-commerce and distribution of liquid fuels, particularly for challenges associated with human and organizational errors whose frequencies may be increasing in the latest pandemic. The lessons learned can help to improve the anomalies monitoring systems thus protecting the interests of consumers, industry, and the government. A case featuring fuels distribution, cyber-physical-systems and the internet of things (IoT) is presented to illustrate several issues that are challenging the design and operation of government-mandated inspection and detection processes for fraud and anomalies. In particular, an Authenticator and Transmitter System (SAT) concept is described for remote monitoring of fuel distribution points via a secure communication channel between the fuel pumps and government regulators. The data collected in this approach are used to analyze the behavior of fuel distribution points and detect anomalous behaviors that could indicate fraud and/or fraud-like precursors to other information disruptions. The method technologies that are described in this paper helps to detect precursors of fraud and other information irregularities in their earliest stages, and to enhance policies that protect the information systems of fuel pipelines and their related logistics systems. Methods such as described herein are integrated among layers of complex information technologies to protect the interests of the energy sector, consumers, and government.
Keywords: Systems engineering; Data analysis; Trust; Logistics; Energy sector; Ransomware (search for similar items in EconPapers)
Date: 2022
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DOI: 10.1007/s10669-022-09843-5
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