Abstract:
The primary objective of generation expansion planning is to meet the electrical energy
needs of the customers as economically as possible with an acceptable degree of
safety, reliability, and quality. Power system planning involves studies to determine
the resources required to meet the growth in demand at the lowest possible cost
considering environmental and financial constraints. A power utility should meet
the demand under a wide range of normal, abnormal, and emergency conditions
including the reasonable foreseeable failures and maintenance outages of facilities.
This requires some generation system capacity reserve in excess of forecasted demand.
The uncertainty associated with future demand projections could make the
system facilities inadequate, or excessive and uneconomical, both cases being unacceptable.
Purchasing cheaper power from other utility through interconnection is
another alternative which improves system reliability.
in this thesis, some studies have been made on generation expansion planning
taking into account the above important criteria. The thesis contains a brief research
background, motivation and objective to the modelling and analysis of some
important requirements of generation expansion planning. The proposed techniques
are implemented to an existing electric utility for generation expansion.
The key to all generation expansion planning is a good forecast of load that
reflects current and future trends, tempered with good judgment. This is quite
important for financial success. Undoubtedly, the most obvious deficiency in any
expansion plan is and eventually is seen to be, the accuracy of the demand forecasts.
Four modules of Artificial Neural Network have been studied in detail, to forecast
peak load of two distribution substations. It is observed from the sensitivity
analysis that all modules are not valid for all systems. In other words, for a specific
system only a particular module is suitable for load forecasting. It is also found
that the predicted results of minimum mean absolute error (MAE) is dependent on
learning rate and learning momentum. Using the findings of the sensitivity analysis,
various modules of ANN are studied and the most suitable module found is used to
forecast yearly peak load of an existing electric utility for fifteen years choosing an
appropriate module for the system.
Reliability criterion, the next aspect, is primarily used to determine the required
S stein generating capacity reserve, to operate the system under equipment failures,
equipment maintenance, and load variations. Probabilistic methods are used to
evaluate reliability of generation expansion plans using stochastic representation of
the generating unit failure-repair process, load variability and emergency help from
interconnections.
A modified FFT method has been proposed to evaluate the loss of load probability
(LOLP) of a power generating system consisting of different types and sizes
of unit. This approach uses hourly loads, or any suitable time interval for system
demand, for a given period. Out of several properties of FFT scheme, some properties
have been used for the reduction of computational complexity. The accuracy
of the method has been illustrated using an example. This modified FFT algorithm
is applied to IEEE Reliability Test System (IEEE-RTS). The modified approach
improves the efficiency in comparison to the conventional FFT method.
Further, another new approach has also been developed to evaluate the LOLP
of a power generating system. This approach uses joint probability density function
(PDF) concepts to convolve the unit outages and loads of the system. The
reduction of computational effort for identical generating units is obtained using the
binomial distribution. The method has been illustrated through an example and is
applied to IEEE-RTS. This method is found efficient and easy to use as compared to
other existing methods. In addition, the proposed approach can simulate multistate
representations of generating units at less computational efforts.
Exploiting these advantages of the proposed approach, generation expansion
planning of an existing utility has been made based on levelized LOLP for projected
future demand.
In generation expansion planning, interconnected system may play an important
role on system reliability. Reliability evaluation methodology of interconnected
systems is different from that of a single area system. If the available capacity in
one geographical region can be transmitted to other regions whenever it is needed
without tie line restrictions then and only then, this system may be treated as a
single area. Though it is possible to evaluate interconnected systems as a single
system with some approximation, but, it is not in practice due to many obvious
reasons.
The improved modified FFT scheme, developed for single area, has been extended
to evaluate LOLP of two area interconnected power systems. A stochastic
procedure for interconnected systems is presented using improved two dimensional
FF'T IMSL subroutine of Cyber 180/840A mainframe. This method can simulate
multi-state generating units without affecting the computational complexity,
whereas the computational complexity of other existing methods increases with the
increase of number of outage states of generating units.
The joint PDF approach, developed for single area, has also been applied to
evaluate LOLP of two area interconnected power system consisting of different types
and sizes of generating units considering independent as well as correlated system
demands. The Probability Density Function (PDF) of equivalent load is obtained
by convolving the PDF of generating unit outages with the PDF of system demands
using the proposed approach. The LOLP values of each system are obtained from the
PDF of equivalent load. The accuracy of the proposed method has been illustrated
using a simple example. The results obtained for IEEE-RTS are compared with
existing methods.
In addition, the above approach is also implemented to an existing utility for
which expansion planning studies were carried out. The system under study is
considered to be interconnected with a hypothetical system. The benefits desired
due to interconnection are evaluated and the impact of interconnection on expansion
planning is studied.
An efficient approach has been developed to evaluate the expected energy generation,
expected unserved energy, production costs (in the thesis production cost
is used for fuel cost) and loss of load probability of a power generating system. The
expected energy generation of a given generating unit is obtained by evaluating the
difference of unserved energy before and after the commitment of the unit. The
method can evaluate expected energy generation and production costs of identical
generating units at a time. This is not restricted to load duration curves and unit
outage density function of any shapes, or size of the systems with a large number
of generation units. Multiple generating units with same outage behavior can be
committed with system demand efficiently.
The new developed approach has been extended to evaluate the expected energy
generation, expected unserved energy and production costs for two area interconnected
power generating system. An example and IEEE-RTS have been used for
illustration.
Further, the proposed method has been used to evaluate expected energy generation,
unserved energy and production cost of the generation expansion plan developed
for existing utility under study. Based on the detailed study, addition of
generating units for the existing utility has been recommended for the period under
consideration.
Reliability index is derived from the estimates of availabilities of generating
units, forecasted loads and unit incremental costs. Uncertainty which results in an
unacceptable estimates of system reliability is implicit in the estimates of availability
of units and forecasted loads. The uncertainty in the availability of generating units
is due to the variation of failure data for different reporting sources and fluctuation
in environmental conditions. Fuzzy set theory provides optimistic and pessimistic
values of the derived quantities, corresponding to the assumptions of the highest
and lowest possibilities of concerned events. In many cases, these bounds provide
excellent guidelines to the generation expansion planners.
A model has been developed for fuzzy reliability to quantify the effect of uncertainty
associated with unit capacity, FORs and the forecast loads on the LOLP of a
power generating system. The model has been explained with the help of a simple
generation system. Studies are also conducted on the IEEE-RTS to demonstrate
effect of uncertainty on system parameters. Effects on the system reliability index
due to variation in the amount of uncertainty of the parameters is studied. This
proposed model has also been applied to a practical system to predict fuzzy LOLP.