http://poetiquejournal.com/ ISSN NO : 0032-2024 Power Loss Optimization in Journal Bearing based on Genetic Algorithm Approach 1 Leeladhar Rajput1 , Ganesh Prasad Shukla1, Anulal Mahto2, Sharad Chandra Srivastava 3 Department of Industrial & Production Engineering, Guru Ghasidas Vishwavidyalaya, Bilaspur, Chhattisgarh, India. 2 Department of Mechanical Engineering, Guru Ghasidas Vishwavidyalaya, Bilaspur, Chhattisgarh, India. 3 Department of Production Engineering, BIT Mesra, Ranchi, Jharkhand Abstract: The process of optimizing the design factors of a hydrodynamic bearing is a challenging and time-consuming endeavor to complete. Due to the usual and time-consuming nature of conventional design processes, This study aims to use a genetic algorithm to determine the optimum bearing configurations for reducing power loss and to create an ideal plain journal bearing. After the power loss equation has been derived, a genetic algorithm is developed using suitable parameters, the number of design variables, including the population size, and the rates of crossover and mutation. A selection procedure that is focused on physical fitness is used. In this investigation, the oil viscosity, the radial clearance of the bearings, and the journal speed are potential design input variables. The suggested algorithm demonstrates rapid convergence while producing results that are superior to those already available in the literature. It is a direct result of the genetic algorithm being a more effective heuristic than other random search methods. Keywords: Genetic algorithm, optimization, journal bearing, design variables 1. Introduction The field of research known as tribology examines physics and chemistry. Wear friction analysis and lubrication behavior are all part of the mechanics of rubbing surfaces. Efforts have been made to minimize friction and wear since ancient times so that people and goods can be moved more cheaply from one location to another. According to Tower [1], the enormous pressure created by the oil film forming between the shaft and bearing was enough to force the plug out of the hole. Simultaneously, journal-bearing friction was of interest to Petroff [2]. His research found a correlation between frictional force and bearing operation parameters. Although he established the concept of fluid film lubrication for hydrodynamic bearing, it is his fault that he should have recognized that the oil film also delivers the pressure produced by the tower. Reynolds [3] was able to develop his theory of fluid film lubrication in hydrodynamic journal bearings and create a formulation for hydrodynamic lubrication as a result of these developments. Hydrodynamic pressure between shaft and bearing is explained by the Reynolds equation resulting from a wedge- Volume 3 Issue 1, 2016 PAGE NO: 67 http://poetiquejournal.com/ ISSN NO : 0032-2024 shaped converging film, the oil's viscosity, and the surface motion. By integrating the Reynolds equation, frictional force, load-carrying capacity, pressure distribution, etc., have all been reduced to an analytical formula thanks to the work of Sommerfeld [4]. Bearings are utilized in various machines, and these equations provide a foundation for designing such bearings. Figure 1: Schematic representation of hydrodynamic journal bearing [19] Rouch, K.E. [5] researched the damping of bearings, which is determined by the actions of the bearings that support the shaft. Shaft-bearing system’s stability is affected by the stiffness properties of the rotating system design, as determined by the research of J.W. Lund, and K.K.Thomsen [6]. The power loss performance goal is an essential consideration while designing, creating, and enhancing hydrodynamic bearings. In this investigation, the fundamental objective of designing plain journal bearings is the minimization of power loss. An essential issue in journal-bearing lubrication is the value of the optimized oil film thickness, the angle between the lines of the center and the vertical, which is referred to as the attitude angle (Basu, S.K. et al. [7]). The sole condition for this bearing is that the lubricant be supplied adequately and continuously. Feeding the lubricant/oil under pressure with this bearing type is unnecessary. Kalyanmoy Debet al. [8], who used six carefully chosen test functions to draw their conclusions, offered a comprehensive comparison of several evolutionary methods for multi-objective optimization. Each test function has its own unique quirk (such as Volume 3 Issue 1, 2016 PAGE NO: 68 http://poetiquejournal.com/ ISSN NO : 0032-2024 multimodality or lying) designed to slow down the evolutionary optimization process and prevent it from reaching the Pareto-optimal front. To evaluate the characteristics of four different Evolutionary Algorithms, Eckart Zitzler and Lothar Thiele [9] used a multiobjective problem along with nine different configurations. In addition, they introduced the Strength Pareto Evolutionary Algorithm (SPEA), an evolutionary approach to multi-criteria optimization that represents a novel mix of four separate multi-objective EAs. The optimal design methodology for enhancing the functional properties of fluid-film steadily loaded journal bearings has been provided by H. Hirani et al. [11]. finite difference technique is implemented to calculate the flow rate and power loss with reasonable precision. The axiomatic design provides the inner workings of the objective functions. At the same time, the Pareto optimal concept, a genetic algorithm to account for the bearing's multimodality, and the generation of a Pareto optimal front all play essential roles in achieving this goal. Boedo and Eshkabilov et al. [12] developed a genetic algorithm strategy for determining the best form for the fluid film under continual journal rotation. One of their primary objectives was improving carrying capacity. However, because of the severe constraints imposed on the journal-bearing design, this is called a multi-objective problem. Minimizing temperature increase, power loss, and oil feed flow are all examples of objective functions with a single, best solution. Since finding a single ideal solution that satisfies everyone's needs is impossible, there must be several optimal solutions. H. Saruhan et al. [13] set out to apply a Genetic Algorithm to develop the best possible pre-loaded fluid film bearing three lobes. The study presents comparisons between its findings and those acquired via numerical optimization. The length-to-diameter ratio is one design variable the Author will explore—bearing radial clearance and lobe arc length. Clearance arrangements of journal bearings fluid-film were proposed by Koichi Matsuda et al. [15] to increase the overall circular bearing's stability at high rotational speeds. To illustrate an arbitrary clearance arrangement of journal bearings, we choose a Fourier series, and An efficiency index is calculated by summing the whirl-frequency ratios over an extensive range of eccentricity ratios and then square-rooting the result. K. Matsumoto et al. [16] detail an optimization process called the optimal design methodology, which is a cross between sequential quadratic programming and the direct search method. The maximum rate of increase in oil film temperature, the rate of leaking, and the inverted speed at which the journal begins to rotate anticlockwise constitute the objective function. Hiromu Hashimoto [17] has refined a method for building short journal bearings with high speed for turbulent and laminar flow conditions using a mix of SQP, GA, and DS. By Volume 3 Issue 1, 2016 PAGE NO: 69 http://poetiquejournal.com/ ISSN NO : 0032-2024 adjusting for factors like radial clearance, slenderness ratio, and average lubricant viscosity, the modified turbulent Reynolds equation can be used to derive simplified closed-form design equations for quantities like eccentricity ratio, friction force, film temperature rise, supply lubricant quantity, and whirl initiation velocity. A. Seirig et al. [18] offer an automated method for selecting the settings of hydrodynamic journal bearings to provide optimal performance under a range of load and speed situations. Journal-bearing applications in equipment such as diesel engines working in laminar flow are examined, and the optimization approach proposed by B. Kirankumar et al. [19] to minimize power loss, temperature rise, and side leakage is referred to in this paper. In their recent article, S. Gupta et al. When appropriately designed, rolling bearings can offer high-performance levels over many years with minimal maintenance. This calls for an optimal design process, namely multi-objective optimization, to simultaneously realize all these goals. Several factors, including diameter, length, radial clearance, groove shape, viscosity, position, etc., determine the functionality of the journal bearing. Designing a bearing can be done by hand using one of several methods. The choice of bearing design factors is typically made through trial and error method, utilizing several design charts. However, there is currently no way to ensure the final composition has the best possible qualities. Engineers have begun using optimization strategies in bearing design due to the rising expectation of lower prices. Many academics have only considered unrealistic onedimensional instances to optimize bearing dimensions with less computational effort. 2. Theoretical & formulations John Holland and his colleagues created genetic algorithms in the '60s and '70s as an abstraction or model of biological evolution using Darwin's theory of natural selection. Holland initially used crossover, recombination, mutation, and choice to study adaptive and artificial systems. These genetic operators form the backbone of genetic algorithms used to solve problems. Since then, many genetic algorithm variants have been developed and applied to a wide variety of optimization problems, including those involving graph coloring, pattern recognition, financial markets, efficient design of airfoils in aerospace engineering, and multi-objective engineering optimization, to name a few. Genetic material is exchanged between mating organisms. The offspring may inherit one parent's chromosomes yet carry those of the other. Recombination is the term for this phenomenon. Occasionally, a mutation can occur in a gene. Rarely will a mutant gene cause the Volume 3 Issue 1, 2016 PAGE NO: 70 http://poetiquejournal.com/ ISSN NO : 0032-2024 phenotypic to change, but when it does, it will be expressed as a novel phenotype. Natural selection, genetic recombination, and random variation are the driving forces behind the diversity of life on Earth. Survival of the fittest, natural selection, and gene mutation play crucial roles in the development of an organism through time. A simplified flowchart illustrating this is provided below as well: Figure 2: Genetic Algorithm Workflow Diagram [11] The fitness function is an integral part of every genetic algorithm. The fitness function evaluates the coded variable vectors and chooses the most optimal strings for the solution based on these ratings. The three vectors of design variables are represented by the binary Volume 3 Issue 1, 2016 PAGE NO: 71 http://poetiquejournal.com/ ISSN NO : 0032-2024 digits 0 and 1. The vector of design parameters has a binary string representation that, when placed head-to-tail, forms a single long string called a chromosome. An answer to the design dilemma can be found on this chromosome. Genetic algorithms are a method of problem-solving that takes inspiration from the strategies employed by nature. They arrive at their solutions through the same selection, recombination, and mutation process. The work presented is an application of the evolutionary algorithm to the problem of designing the best possible fluid film journal bearing, with the goal of achieving the lowest possible power loss. For power loss, the criterion function is = 2π3 µD3Ns2L/ C Fobjective = power loss objective Fitness Function = Fobjective (1) (2) (a) Two variables optimization problem Objective: To reduce the power loss of journal bearings resulting from the developed function F= Subjected to: 1≤ μ ≤16, 35≤ C ≥ 70 μ = Oil viscosity of lubricant (mPa) C= Radial clearance (μm) Optimization Technique: Genetic Algorithm Selection: Fitness value-based selection method Initial Population: 20 Probability of crossover: 0.70 Probability of mutation: 0.010 (b) Three variables optimization problem Objective: To reduce the power loss of journal bearings resulting from the developed function F= Subjected to: 1.0 ≤ μ ≤ 16.0, 35.0 ≤ C ≥ 70.0, 40≤ Ns ≥50 Volume 3 Issue 1, 2016 PAGE NO: 72 http://poetiquejournal.com/ ISSN NO : 0032-2024 μ = lubricant oil viscosity in mPa-s C= The radial clearance in μm Ns = speed in rad/s Optimization approach: Genetic Algorithm Selection: Selection technique based on fitness value The population at the start: 20.0 Probability of crossover: 0.70 Probability of mutation: 0.010 3. Result and Discussions A genetic algorithm was employed by Hirani et al. [11] in the axiomatic design of a journal bearing. The proposed objective function is verified by plugging in the variables values (used by Hirani, H. et al. [11]). It provides power loss estimates roughly in the ballpark of what that other team found. The minimum power loss is achieved in journal bearings within the recommended limitations stated in Table 1, and it is necessary to minimize this objective function. Table 1: Comparison of power loss values obtained in present work with reference S.I. No Design Variable Power loss as per Power loss as per Percentage [μ/C] [11] present work Error [mPa-s / μm] (in Watts) (in Watts) 1 [6.47/30.0000] 671.5048 641.9540 4.4% 2 [6.34/30.0000] 663.8143 629.0553 5.23% [μ is lubricating oil viscosity measured in mPa-s and C is the radial clearance in μm] The results produced in the present work deviate slightly from the reference values. Therefore, further studies in the suggested activity can use the stated objective function. According to the proposed procedure, the genetic algorithm was run using a MATLAB-created computer Volume 3 Issue 1, 2016 PAGE NO: 73 http://poetiquejournal.com/ ISSN NO : 0032-2024 program, and a selection approach based on fitness values was used. The first variety utilizes journal-bearing characteristics chosen following the research paper's methodology. Here, MATLAB's genetic algorithm is used for the three-variable issues to get the best possible power loss value. Taking into account 25 generations, we selected depending on fitness values. The same genetic method has been used for the optimization issue provided, with the oil viscosity, radial clearance, and journal speed of the bearing all taken into account. Thus, in the 25th generation, a minimum power loss of 406.6342 W is generated. At the 25th generation, the algorithm reached convergence. After the second generation, a strategy using random crossover and mutation probability was used. Figure 3: Optimization using three variables (minimization of power loss) convergence diagram. The convergence diagram for the three variable issues is represented in Figure 3, which shows the best genes' fitness values over multiple generations. If the genes' fitness in the most recent generations is very close to being the same, then the algorithm has converged. Figure 4: Oil viscosity and power loss dependence for three variable optimisation Volume 3 Issue 1, 2016 PAGE NO: 74 http://poetiquejournal.com/ ISSN NO : 0032-2024 Power loss due to the first design variable, oil viscosity, varies between generations, as seen in Figure 4. Figure 5: Oil viscosity and power loss dependence for three variable optimisation Figure 5 displays the generational differences in power loss for a journal bearing with a variable radial clearance from the second design generation. Figure 6: Dependence of power loss on journal speed for three variables optimization Power loss on the third design variable (journal speed) varies from generation to generation, as shown in Figure 6. This is a three-variable optimization issue with the goal of minimizing power loss. Volume 3 Issue 1, 2016 PAGE NO: 75 http://poetiquejournal.com/ ISSN NO : 0032-2024 Figure 7: Genealogy for three variable optimizations (Minimization of power loss) Family trees for optimization issues with two variables are shown in Figure 7. Genealogy is the study of family trees. The following table summarises the color coding of generational lines. Red lines represent mutant offspring. Blue lines represent children who cross over and Black lines denote people of eminence. The pattern of genes and designs represented that the power loss in a journal bearing is reduced by increasing the distance between their values. A genetic method tailored to the optimization of journal-bearing designs was also proposed. The proposed genetic algorithm worked well for designing the journal-bearing design variable. The accuracy and adaptability were satisfactory. Regarding time spent searching for a solution, the genetic algorithm performed admirably. This technique can handle issues with as few as two variables and as many as three variables. The proposed evolutionary algorithm includes a novel component that allows for creating new solutions via one, two, or multi-point crossover (with the nature of the crossover being generated randomly). This unique quality improves the stochastic features of the genetic algorithm by ensuring a more even mixing of genes throughout the development of newer iterations. Results from the first problem can be used to infer a given pattern of design variables, which, in most cases, leads to a more optimal value for the objective function. 4. Conclusion The current work demonstrates both the development of the genetic algorithm method and the potential use of the technology while addressing a hydrodynamic journal bearing. The fundamental goal of this endeavor is to create bearing arrangements that maximize the goal of Volume 3 Issue 1, 2016 PAGE NO: 76 http://poetiquejournal.com/ ISSN NO : 0032-2024 suffering the least amount of power loss feasible. The findings obtained from this investigation are superior to those obtained by conducting the research using a gradient-based optimization technique. Iterative optimization is used in place of a starting point to find the values of the design variables that maximize the objective function. MATLAB is used to run the computer program that implements the genetic technique, and it is also used to construct the mathematical derivation for the fitness function. References [1] Tower, B., “First and second report on friction experiments (friction of lubricated bearings)”, Proceeding Institute, Mechanical Engineers, London, UK, pp. 659 and pp. 58-70, (1883). [2] Petroff, N., “Friction in machines and the effect of lubrication (in Russian)”, Inzh., Zh., St. Petersburg, vol. 1-4(71), pp. 227, 377, 535, (1883). [3] Reynolds, O., “On the theory of lubrication and its application to Mr. Beauchamp Tower’s experiments, including an experimental determination of the viscosity of olive oil”, Philosophical, Transaction, Royal Society, pp. 177, 157-234, (1886). [4] Sommerfeld, A., “Zur Hydrodynamischen Theorie der Schmiermittelreibung”, Z. Angrew. Math., Phys., pp. 50, 97-155, (1904). [5] Rouch, K.E., “Experimental evaluation of squeeze film damper coefficients with frequency domain techniques”, Tribology Transactions, vol. 33 (1), pp. 67-75, (1990). [6] Lund, J.W. and Thomsen, K.K., “A calculation method and data for the dynamic coefficients of oil-lubricated journal bearing and rotor bearing system design and optimization”, ASME, (1978). [7] Basu, S.K., Sengupta, S.N., and Ahuja, B.B, “Fundamental of Tribology”, PrenticeHall of India, (2006). [8] Deb K.M., Zitzler E. and Thiele, L., “Comparison of Multi objective Evolutionary Algorithms: Empirical Results”, Massachusetts Institute of Technology Evolutionary Computation, vol. 8 (2), pp. 173-195, (2000). Volume 3 Issue 1, 2016 PAGE NO: 77 http://poetiquejournal.com/ [9] ISSN NO : 0032-2024 Zitzler, E. and Thiele, L., “Multi objective Evolutionary Algorithms-A Comparative Case Study and the Strength Pareto Approach”, IEEE Transactions on evolutionary computation, vol. 3(4), pp. 257-271, (1999). [10] Popov, A., “Genetic algorithms for optimization-Application in controller design problems”, TU Sofia, Hamburg, pp. 3-21, (2003). [11] Hirani, H. and Suh, N.P., “Journal Bearing Design Using Multi Objective Genetic Algorithm and Axiomatic Design Approaches”, J. Tribology International, vol. 38, pp. 481–491, (2005). [12] Boedo, S. and Eshkabilov, S. L. “Optimal shape design of steadily loaded journal bearings using genetic algorithms”, STLE Tribology Transaction, vol. 46(1), pp. 134143, (2003). [13] Saruhan, H., Rouch, K.E., and Roso, C.A., “Design optimization of fixed pad journal bearing for rotor system using a genetic algorithm approach”, International Symposium on Stability Control of Rotating Machinery, ISCORMA-1, Lake Tahoe, Nevada, (2001). [14] Goldberg, D.E., “Optimal initial population size for binary-coded genetic algorithms”, TCGA Report No.85001, Tuscaloosa, AL, (1985). [15] Matsuda, K. and Kijimoto, S., “Stability-Optimized Clearance Configuration of FluidFilm Bearings”, Tribology, vol. 129(1) pp. 106-111, (2007). [16] Matsumoto, K., and Hashimoto, H., “Improvement of Operating Characteristics of High-Speed Hydrodynamic Journal Bearings by Optimum Design: Part I— Formulation of Methodology and Its Application to Elliptical Bearing Design”, J. Tribology, vol. 123(2), pp. 305-312, (2001). [17] Hashimoto, H., “Optimization of Oil Flow Rate and Oil Film Temperature Rise in High Speed Hydrodynamic Journal Bearings”, J. Tribology Series, vol. 34, pp. 205-210, (1998). [18] Seirig, A., and Eggat, H., and JOLT, “Optimum Design of Hydrodynamic Journal Bearings”, J. Wear, vol. 14(4), pp. 302, (1999). [19] Kirankumar, B. and Prajapati, J.M., “A brief review on Optimum Design of A Journal Bearings for I.C. Engine”, IJERT, vol. 1(4), (2012). Volume 3 Issue 1, 2016 PAGE NO: 78 http://poetiquejournal.com/ [20] ISSN NO : 0032-2024 Gupta, S., Tiwari, R., and Nair,S., “Multi-objective Design Optimization of Rolling Bearings Using Genetic Algorithms”, Mechanism and Machine Theory, vol. 42, pp. 1418-1443, (2007). Volume 3 Issue 1, 2016 PAGE NO: 79