IMPROVING THE RELIABILITY OF TRACTION ROLLING STOCK USING PREDICTIVE ANALYTICS OF ENGINE OIL INDICATORS
Abstract and keywords
Abstract (English):
Locomotive transport is one of the relevant development areas in the general infrastructure of the sectoral economy. At the moment, a number of tasks and problems related to upgrading existing and the creation of new engine diagnostic systems for this vehicle are being updated. The main purpose of the presented paper is to analyze the possibility of improving the reliability of traction rolling stock by integrating predictive analytics tools for engine oil quality. The authors actualize the tasks related to the need to introduce innovative approaches to analyzing engine oil indicators in real time in order to take appropriate measures to adjust its composition. The paper contains data on the solution to this problem by using predictive analytics tools together with intelligence technologies for monitoring engine oil indicators. The results of the paper describe a possible solution to the problem by using artificial neural networks in determining the current state of the unit, as well as predicting possible changes in the technical condition of the engine relative to operating time. The results also include an algorithmic interpretation of the solution of the initial problem through the introduction of predictive analytics tools. The novelty of the work is in an attempt to comprehensively study and systematize the results regarding the use of predicative analytics to improve the reliability of traction rolling stock by analyzing engine oil indicators. The paper materials are of practical importance, as it is possible to use them to create applied solutions in subsequent research.

Keywords:
rolling stock, locomotive, oil, analytics, monitoring, diagnostics, artificial intelligence
References

1. Fedotov MV, Grachev VV. Predictive analytics of the technical condition of diesel locomotive systems using neural network predictive models. Bulletin of Scientific Research Results. 2021;3:102-114.

2. Dobrynin SL, Burkovsky VL. Monitoring and predictive analytics of technological equipment based on the industrial Internet of things. Vestnik VSTU. 2020;5:7-12.

3. Tureniyazova AI, Sprishevsky KV. Analysis of possibilities and problems of introducing artificial intelligence. SAI. 2023;3(special issue):201-204.

4. Batoev V.B. Use of predictive analytics in law enforcement activities. Society and Law. 2022;4(82):99-107.

5. Kuznetsov AG, Kharitonov S. V., Kamenskikh S. A. Development of a neural network regulator for diesel. BMSTU Journ of Mechanical Engineering. 2023;5(758):90-100.

6. Lakin IK, Pavlov VV, Melnikov VA. Smart locomotive: diagnostics of traction electric motors of diesel locomotives using machine learning methods. Transport of the Russian Federation. 2018.

7. Kovalishin FP. Study of relaxation of electrical parameters of used engine oil. Bulletin of Youth Science. 2023;2(39):6-14.

8. Nurlygayanov TR, Demin AYu. Using of artificial intelligence to assess the quality of petrochemical liquids. Innovative Science. 2023;8-1:10-14.

Login or Create
* Forgot password?