Backstepping technique based nonlinear controller for a textile dyeing process B. Bandyopadhyay Systems & Control Engineering Indian Institute of Technology Bombay Mumbai, India Abstract This paper describes a control scheme for a MIMO system using backstepping method. Backstepping method is preferred in case of uncertainties in the process and constraints acting on the control input. In the present work, backstepping method for a PMTD process is investigated in order to maintain the concentration and volume of the dye bath thereby reduce the tailing effect. The proposed control strategy is designed and simulated using Matlab/ simulink and results are presented to validate the proposed control scheme. Keywords: Backstepping , PMTD (Padding mangle for textile dyeing) process, Tailing effect. 1 Introduction In many real world systems, there are nonlinearities, unmodeled dynamics, immeasurable noise, multiloop etc. which pose problems to engineers in trying to implement control strategies. During the past two decades a large number of control strategies such as adaptive, optimal and robust control have been evolved. Most of these techniques need to use linear model of the plant. In the application of such techniques, development of mathematical models is a prior necessary. However, such mathematical modeling which is largely based on the assumptions of linearization of systems might not reflect the true physical properties the system. Improving or understanding a chemical process operation is a major overall objective for developing a dynamic process model.. These models are often J. V. Desai & C. D. Kane Textile & Engineering Institute Ichalkaranji, India used for (i) Operator training (ii) Process design (iii) Safety system analysis or design or (iv) Control system design. Continuous methods of dyeing and processing of fabric have the merits of saving time and producing a uniform result, though they have the disadvantage especially in continuous dyeing, that it is necessary to process considerably large amounts of fabric to be dyed in any one shade to justify the initial high cost of the plant. In such continuous operations the basic operation common to all is the padding operation which consists of passing carefully scoured and bleached fabric in open-width through a small trough containing the processing solution and then removing the excess solution by passing between positively driven loaded rollers, which constitute the padding mangle. A simple padding mangle consists of two squeezing bowls (rollers) the upper one of iron and covered with rubber and the lower one of brass or vulcanite, arranged over a shallow trough, provided with two or more freely rotating guide rollers. Fig.1 shows the line diagram of padding mangle. If the dyes or chemicals used in padding on the fabric have affinity, their concentration in the liquor contained in the trough goes on decreasing, resulting in the tailing effect.. The tailing effect will finally result in reduction in the volume and concentration. 2 Mathematical model In the present work, while developing the model it is found that the whole dyeing phenomenon cannot be fully modeled. The process is governed by many non-measurable parameters.. Parameters Authorized licensed use limited to: INDIAN INSTITUTE OF TECHNOLOGY BOMBAY. Downloaded on June 5, 2009 at 05:55 from IEEE Xplore. Restrictions apply. Plant dynamics 10 Concentration 9 8 7 Conc 6 5 4 1 2 3 4 5 6 7 8 9 Samples Figure 1: Line diagram of PMTD process Figure 2: Plant dynamics like dye exhaustion, electrolyte concentration, dye affinity towards cellulose, fabric construction, pre CB = Concentration of the solution in the bath. treatment of fabric and liquor ratio are not measurable. Measurable parameters like temperature, MB = Volume of the solution in the dye bath. pH , and mangle pressure have greater significance on the behaviour of the process. But the relation V= Velocity of the fabric = Feed rate of these parameters with the change in the concenRv = Liquor retention by the fabric tration is not known. Again, ‘Rv’ known as ‘liquor retention in fabric’ is a key parameter to be conFM = Flow rate of concentrated feed. sidered in the model. ‘Rv’ depends on many of the FW = Flow rate of diluted feed. earlier stated process parameters and its relation with the latter cannot be established. The model CM =Concentration of the solution in make up of the PMTD process can be obtained using mass tank. balance equations. However the above limitation makes the mass balance equations based mode approximate.. Experimentation is carried out on a laboratory model and using the measured data and Table 1: Variations in process parameters during mass balance formulations, a nonlinear model is de- dyeing in a PMTD Process veloped. The developed mode lis shown below. Volume of the bath Conc. in the Bath 2000 10.00 1960 9.87 dCB = k1 CB + k3 (1) 1920 9.43 dt 1880 8.20 dMB = FM + FW − Rv V 1840 7.33 dt 1801 6.87 Rv V k1 = − (2) 1762 6.08 MB 1723 5.26 FM CM k3 = (3) 1686 4.95 M B where Authorized licensed use limited to: INDIAN INSTITUTE OF TECHNOLOGY BOMBAY. Downloaded on June 5, 2009 at 05:55 from IEEE Xplore. Restrictions apply. Table 2: K/S Values of a dyed fabric Sr.no K/S Values 1 96.85 2 94.68 3 94.10 4 93.04 5 91.96 6 85.57 7 62.83 . x2 = f2 (x, u1 , u2 ). It is desired that . x1 = f3 (x1 ), f3 (x1 ) − f1 (x, u1 ) = 0 The following two-step procedure illustrates the design procedure for a backstepping controller for the PMTD process. 3 Nonlinear control of PMTD Step1: Define z1 = x1 − x1d as the first tracking error variable. Process where x1 =Concentration of the dye bath x1d = Desired concentration of the dye bath. As seen from the plant dynamics in Fig 2, concenThe derivative of z1 is given by tration and volume decreases with time and therefore both these states need to be controlled and Rv V (z1 + x1d ) + u1 CM . z1 = . maintained at desired values. Here the design of z2 + x2d control law for the PMTD process using backstepStep 2: Define z2 = x2 − x2d , as the second variping technique is discussed. In traditional backable. stepping, the output is selected as x1 (t), which where x2 = Volume of the dye bath might be required to follow a prescribed trajectory x2d = Desired Volume of the dye bath. x1 d(t) : In this method one starts at the desired The derivative of the variable z2 is given by output, and backsteps through the system selecting desired values of the state components until the ac. z2 = u1 + u2 − Rv V. tual control input u(t)is reached. Consider the nonlinear model of the PMTD Considering the desired dynamics, the derivaplant. tives will be made equal to stable states like -z1, or -z2, and the control inputs are derived. dCB = k1 CB + k3 (4) dt z1 = x1 − x1d , dMB = FM + FW − Rv V dt z2 = x2 − x2d . Rv V CB = x1, MB = x2 , FM = u1, FW = u2 k1 = − MB dx1 Rv V u1 . x1 = =− x1 + CM FM CM dt MB x2 k3 = . MB x2 = u1 + u2 − Rv V where CB = x1 = Concentration of the dye bath x1 = z1 + x1d MB = x2 =Volume of the dye bath x2 = z2 + x2d FM = u1 =Control input 1 Rv V (z1 + x1d ) + u1 CM . FM = u2 =Control input 2 z1 = z2 + x2d . z2 = u1 + u2 − Rv V dx1 Rv V u1 . x1 = =− x1 + CM dt x2 x2 Let . . x2 = u1 + u2 − Rv V z1 = −z1 . x1 = f1 (x, u1 ), . z2 = −z2 . Authorized licensed use limited to: INDIAN INSTITUTE OF TECHNOLOGY BOMBAY. Downloaded on June 5, 2009 at 05:55 from IEEE Xplore. Restrictions apply. Figure 3: Set point tracking of concentration Then upon simplifying , the two control inputs obtained are as shown below. Figure 4: Set point tracking of Volume. coeffecient for disperse dyes”, Textile Research Journal, 71(4), pp 357 -361, 2002. 1 [(x1d − x1 ) x2 + Rv V x1 ] , CM (5) [4] E.Cleve, E.Bach, U.Denter, H.Duffner, and E.Schollmeyer “ New mathematical model for determining time dependent adsorption and diffusion of dyes into fibers through dye sorption 1 u2 = x2d −x2 − [(x1d − x1 ) x2 + Rv V x1 ]+Rv V. curves in combination shades” Textile Research CM Journal, 67(10), pp 701 -706, 1997. (6) u1 = 3.1 Simulation results Nonlinear controller using backstepping technique is designed. Fig 3 and Fig.4 indicate the simulated results for set point tracking of concentration and volume respectively. References [1] Denn. M . M ., “ Process Modelling”, Longman, Newyork, 1986. [2] Cheng-chun Huang and W en-Hong Yu.,“ Control of dye concentration, pH , temperature in dyeing processes ”, Textile Research Journal, 69 (12), 9 14-9 18, 1999. [3] MathildeCasetta, Vladan Koncharand Claude Caze., “ Mathematical modeling of the diffusion Authorized licensed use limited to: INDIAN INSTITUTE OF TECHNOLOGY BOMBAY. Downloaded on June 5, 2009 at 05:55 from IEEE Xplore. Restrictions apply.
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