ijact-book-coverT

Extending SAP Asset Accounting with SAP BTP for Predictive Maintenance and Compliance

漏 2025 by IJACT

Volume 3 Issue 4

Year of Publication : 2025

Author : Madhusudana Kamballi

:10.56472/25838628/IJACT-V3I4P101

Citation :

Madhusudana Kamballi, 2025. "Extending SAP Asset Accounting with SAP BTP for Predictive Maintenance and Compliance" ESP International Journal of Advancements in Computational Technology (ESP-IJACT)  Volume 3, Issue 4: 1-5.

Abstract :

In sectors that depend on having physical objects, SAP Business Technology Platform (SAP BTP) and SAP Asset Accounting (FI-AA) have recently developed considerable momentum as approaches to regulatory compliance plans and predictive maintenance processes. This review looks at machine learning applications, data orchestration platforms, and architecture optimizations that cross the frontiers of capital and operational constraints in relation to asset management. Experiments show a meaningful improvement in asset life cycle optimization, compliance, and predictive accuracy. Key architectural models presented in the paper will also consider performance data and future research opportunities to develop intelligent automation of asset accounting workflows.

References :

[1] Grabski, Severin & Leech, Stewart & Schmidt, Pamela. (2011). A Review of ERP Research: A Future Agenda for Accounting Information Systems. Journal of Information Systems. 25. 10.2308/jis.2011.25.1.37.
[2] Mobley, R.K. (2002) An Introduction to Predictive Maintenance. 2nd Edition, Butterworth-Heinemann, Oxford. https://doi.org/10.1016/B978-075067531-4/50006-3.
[3] Reis, João & Amorim, Marlene & Melao, Nuno & Cohen, Yuval & Rodrigues, Mário. (2020). Digitalization: A Literature Review and Research Agenda. 10.1007/978-3-030-43616-2_47.
[4] Nendrambaka, Sravan Kumar. (2024). Recent Advances and Innovations in SAP S/4HANA Cloud and SAP BTP and SAP AI: Integration Strategies and Latest Developments. International Journal of Scientific Research in Computer Science, Engineering and Information Technology. 10. 1743-1751. 10.32628/CSEIT241061219.
[5] Vaid, Adarsh & Sharma, Chetan. (2023). Data-driven predictive maintenance and analytics in SAP environments enhanced by machine learning. World Journal of Advanced Research and Reviews. 17. 926-932. 10.30574/wjarr.2023.17.2.0019.
[6] Richardson, Ava. (2025). AI-Driven Predictive Maintenance: Enhancing Equipment Reliability in Asset-Heavy Industries. Journal of Cloud Computing.
[7] Subramanian, Sunthar. (2022). Integrating IoT and Manufacturing process for Real-Time Predictive Maintenance in High-Throughput Production Environments This work is licensed under CC BY-NC-SA 4.0. 2. 36.
[8] Ashraf, Musaib. (2024). Does automation improve financial reporting? Evidence from internal controls. Review of Accounting Studies. 30. 436-479. 10.1007/s11142-024-09822-y.
[9] Sharma, Jeetesh & Mittal, Murari & Soni, Gunjan. (2022). Condition-based maintenance using machine learning and role of interpretability: a review. International Journal of System Assurance Engineering and Management. 15. 10.1007/s13198-022-01843-7.
[10] Schneider, Jan & Gröger, Christoph & Lutsch, Arnold & Schwarz, Holger & Mitschang, Bernhard. (2025). Architectures and Implementations of Data Lakehouses: Case Studies from Industrial Practice. 241-255. 10.1007/978-3-031-94193-1_18.
[11] McMahon, Paul & Lima, Eliana & Costa, Ana Paula. (2020). Establishing the relationship between asset management and business performance. International Journal of Production Economics. 10.1016/j.ijpe.2020.107937.
[12] Trigo, Antonio & Belfo, Fernando & Pérez Estébanez, Raquel. (2014). Accounting Information Systems: The Challenge of the Real-time Reporting. Procedia Technology. 16. 10.1016/j.protcy.2014.10.075.
[13] Garg, Amik & Deshmukh, S G. (2006). Maintenance management: Literature review and directions. Journal of Quality in Maintenance Engineering. 12. 205-238. 10.1108/13552510610685075.

Keywords :

SAP Asset Accounting, SAP BTP, Predictive Maintenance, Regulatory Compliance, Intelligent ERP, IoT Integration, Asset Lifecycle Management, Enterprise Architecture, Data-Driven Compliance, Machine Learning in ERP.