Academic Journal of Engineering and Technology Science, 2022, 5(1); doi: 10.25236/AJETS.2022.050105.
Lu Zhou1, Yu Cui2
1School of Electrical and Information Engineering, Liaoning Institute of Science and Technology, Benxi 117004, Liaoning, China
2Siemens Ltd., China, Beijing, 110000, China
In the research of electrical automation engineering, AI technology has been widely used in industrial production and scientific research. It can help people do deeper and higher quality work, and also improve our ability to develop artificial intelligence systems. Therefore, this paper designs an electrical automation engineering system based on AI technology. Firstly, this paper introduces the concept and composition of electrical automation engineering, then expounds the definition, characteristics and classification of AI technology, then studies the existing problems of electrical automation engineering, designs the electrical automation engineering system framework based on AI technology, and tests the function of the system. Finally, the test results show that in terms of the stability of each module function of the system, the shortest stability time is at least 24 hours, which can ensure the stable operation of the system. In terms of the time spent connecting to the network, the DNS lookup time is within 3 seconds, the server processing time is within 2-3 seconds, and the content data transmission time is within 4 seconds. This shows that the system can run stably.
AI Technology, Electrical Automation, Electrical Engineering, Automation Engineering
Lu Zhou, Yu Cui. Electrical Automation Engineering Based on AI Technology. Academic Journal of Engineering and Technology Science (2022) Vol. 5, Issue 1: 22-27. https://doi.org/10.25236/AJETS.2022.050105.
 N Jock P, Shen S L, Zhou A, et al. Evaluation of soil liquefaction using AI technology incorporating a coupled ENN / t-SNE model[J]. Soil Dynamics and Earthquake Engineering, 2020, 130(Mar.): 105988.1-105988.10.
 Toru, SAKAMOTO. Utilization and potential of global patent search & analysis tool "Xlpat" by using AI technology[J]. The Journal of Information Science and Technology Association, 2018, 68(7):343-347.
 Takei Y. Gathering information efficiently by AI technology!- For analyzing social big data[J]. Broadcast Technology, 2018(72):26-26.
 Wang Q, Liu H Z, Shi A M , et al. Review on the processing characteristics of cereals and oilseeds and their processing suitability evaluation technology[J]. Journal of integrated agriculture (English), 2017, 16 (012): 2886-2897
 Zhang W , Cai W , Min J , et al. 5G and AI Technology Application in the AMTC Learning Factory[J]. Procedia Manufacturing, 2020, 45(4):66-71.
 Sun Q, Yang L. From independence to interconnection — A review of AI technology applied in energy systems[J]. CSEE Journal of Power and Energy Systems, 2019, 5(001):21-34.
 Vaithianathasamy S. AI vs AI: fraudsters turn defensive technology into an attack tool[J]. Computer Fraud & Security, 2019, 2019(8):6-8.
 MM Ziegler, Kailas K, Zhang X, et al. Research from the IEEE IBM AI Compute and Emerging Technology Symposia[J]. IEEE Journal on Emerging and Selected Topics in Circuits and Systems, 2019, PP(99):1-1.
 Schuh G , Hicking J , Stroh M F , et al. Using AI to Facilitate Technology Management – Designing an Automated Technology Radar[J]. Procedia CIRP, 2020, 93(3):419-424.
 He D , Guan K, Fricke A , et al. Stochastic Channel Modeling for Kiosk Applications in the Terahertz Band[J]. IEEE Transactions on Terahertz Science and Technology, 2017, 7(5):1-12.
 Wang H, Chen S, Ai M , et al. Localized Mobility Management for 5G Ultra Dense Network[J]. IEEE Transactions on Vehicular Technology, 2017, PP(9):1-1.
 Lin Y, Ai Y, Shan X , et al. Liquid crystal based non-mechanical beam tracking technology[J]. Optics & Laser Technology, 2017, 91(Complete):103-107.