2020 Virtual AIChE Annual Meeting
(340b) Dynamic Operability Analysis of a Natural Gas Combined Cycle Power Plant Using a Novel Branch and Bound Method
Under the influence of a stochastic disturbance, the process achievable output set (AOS) is shifted from its nominal value by the amount corresponding to the projection of the probability density function of the random variable associated with the disturbance after mapping it through the disturbance model. If the intersection of all the AOSs at different realizations of the disturbance is non-empty, the design is controllable, and the variance of the outputs can be quantified by the hyper-volume of the dynamic AOS when the process outputs converge to a time-invariant set. However, evaluating the dynamic AOS of a high-dimensional system by sampling techniques is computationally expensive and requires a large number of function evaluations. A novel branch and bound estimation of the dynamic AOS is developed in this work based on the fact that the gradient of the operability mapping function at each closure point of the AOS is singular and there exists a convex cone that only intersects with the dynamic AOS at one point which also corresponds to a closure point of the AOS.
The proposed dynamic operability framework is applied to a load-following natural gas combined cycle (NGCC) power plant. The framework aims to find a controllable design that can achieve the desired set of net load power generation when the heating value of natural gas and the ambient conditions are characterized by random variables. Results of the framework application to the NGCC system will be discussed for different disturbance realizations.
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