A Thermoeconomıc Optımızatıon Of A Bınary Geothermal Power Plant
Özet
This research was carried out for the thermodynamic analysis of a binary geothermal
power plant and its thermoeconomic optimization based on the results obtained. In this
context, initially, data related to the design point and off-design operating points of the
plant were collected from a geothermal power plant which is currently operating in the
Aydın/Germencik region in southwestern Anatolia. Based on the data obtained, a
thermodynamic model of the power plant was constructed as a result of various
simulations and this model was verified by using the outputs of the plant (such as net
power, first and second law efficiency) and the outputs of similar plants in the literature.
By means of this model, an exergy analysis of the power plant was carried out in the first
place. Following the exergy analysis, a new method has been proposed, consisting of 4
steps and based on thermodynamic-thermoeconomic criteria, in order to make the
selection of working fluid more effective in the existing power plant. As a result of the
elimination of 29 candidate fluids from different chemical groups according to the new
method, it was evaluated that R113 could be a more suitable alternative to the existing n pentane fluid. In addition, a waste-heat recovery system was proposed for the re-utilization of geothermal water, which is re-injected to the soil at the exit of the power
plant, and R115 was chosen as the working fluid for this hypothetical system. After this
case study, by using 3 different exergoeconomic analysis methods on the power plant,
levelized electrical cost (LEC) of the power plant was tried to be estimated through the
initial thermodynamic model. Moreover advantages/disadvantages of the methods
compared to each other. After this stage, studies were carried out to create a non-design
model that can represent the non-design operating points of the plant with sufficient
accuracy. At the first stage, the turbine curves in the two cycles were determined and their
integration into the thermodynamic model was provided by using off-design plant data.
Statistical models for various parameters were also established in the MATLAB
environment in order to increase the power and mass flow rate estimation precision of the
turbine curves. The results obtained from the turbine curves were compared with various
power plant data and empirical correlations. In the last stage, optimum plant
configurations have been determined and presented as novel suggestions, both from a
retrospective point of view and depending on the changing environment and initial
conditions, by using convex and gradient-based optimization algorithms for off-design
data points.