Abstract:
Distribution Power Flow analysis is one of the main features of power system studies
and design. It is required for monitoring, contingency analysis, economic scheduling, plan ning, exchange of power between utilities, stability analysis, and expansion of Distribution
Power System. Conventionally, the power flow problem is determined by numerical tech niques such as Newton-Raphson (NR) and their variants Fast Decoupled Method. Such
methods fail to provide the power flow solutions in some conditions, like ill-conditioned
systems, distribution systems having large r/x ratio, islanded microgrids, etc. This thesis
studies these aspects of Distribution Power Flow Analysis and investigates some new ideas
and approaches to solve them in an effective and efficient ways.
This thesis thoroughly explores the distribution power flow problem and originates
significant contributions. We investigate various numerical techniques and evolutionary
algorithms in order to solve the different class of power flow problem of modern distri bution systems. Using these approaches, we have been able to resolve some of the open
issues regarding power flow of modern distribution systems, such as ill-conditioning, a
high value of r/x ratio, issues related to islanding of distribution system. The thesis pro poses 11 algorithms addressing the problem such as: (i) Ill-conditioned test systems, (ii)
High r/x ratio of lines, (iii) Unbalanced test systems, (iv) Absence of slack bus in islanded
microgrids, and (v) Variable system frequency in islanded microgrids.
In five algorithms, modifications is proposed in conventional power flow algorithms to
overcome the above said problems. In addition, six nature-inspired optimization technique
are proposed to solve power flow problems.
In grid connected distribution, systems are usually ill-conditioned and conventional
algorithms poorly performs or even diverges. This thesis introduces a novel Current
Injection based Newton-Raphson (CINR) power flow algorithm with new PV bus repre sentation for improving the convergence characteristics. Moreover, an algorithm based
von fourth-order Levenberg-Marquardt algorithm with a non-monotone line search is in troduced for solving power flow problem of ill-conditioned unbalanced and balanced grid connected systems. We also propose a fourth-order Runge-Kutta algorithm in order to
solve ill-conditioned grid-connected systems. The proposed approaches are validated for
several ill- and well-conditioned cases. Results show that the proposed approaches have
better efficiency than the conventional load flow algorithms.
In this work, a new optimization algorithm called Spherical Search (SS) is proposed
to solve the bound-constrained non-linear global optimization problems. In addition,
an extension of a newly proposed optimization technique, Butterfly Optimizer (BO) for
constrained optimization problems (called as Butterfly Constrained Optimizer (BCO)) has
been proposed to solve load flow problem. Results show that the BCO and SS perform
competitively and more effectively with respect to well-known algorithms.
The existing methods of power flow problem are intricate and hard to realize due
to the absence of reference bus (slack bus) in the islanded microgrids. To address this
issue, an iterative power flow based technique is proposed to obtain the operating point
of Droop Controlled Islanded Microgrid (DCIMG). To solve these set of equations, a
nested-iterative Newton-Rapshon based algorithm is proposed. A modified version of
well-known Backward/Forward Sweep (BFS) algorithm is also proposed to solve the load
flow problem for droop-regulated AC microgrids operated in islanded mode. To solve this
problem, a novel formulation as a constrained optimization problem is proposed. Two
global optimization algorithm, Differential Evolution with Gauss-Newton based muta tion ( DE-GN) and Matrix Adaptation Evolution Strategy (MAES), are utilized to solve
this optimization problem. The performance of the proposed algorithms is compared
with the Newton-trust, Interior-point and time domain methods. The proposed algo rithms are employed on several test systems and results are compared with that obtained
from other Jacobian-free based, Jacobian based algorithms and time-domain simulator
PSCAD/EMTDC. The proposed algorithms for droop-regulated AC microgrid exhibit
faster convergence, simple, accurate and easy to realize.
Effective Butterfly Optimizer with Covariance Matrix Adapted Retreat Phase (EBOwith CMAR) is a self-adaptive Butterfly Optimizer which uses covariance matrix to generate a
new solution and thus improves the local search capability of EBO. Optimal Power Flow
(OPF) of grid-connected microgrids is a highly non-linear complex optimization problem.
viThis work utilizes EBOwithCMAR as an optimization algorithm and CINR as a power
flow tool to solve the OPF of grid-connected microgrids effectively and efficiently. The
proposed approach has been validated on the standard test systems for several OPF ob jectives. Simulation outcomes have been compared and analyzed with the recent studies.
In this thesis, an optimization approach to determine the optimal droop settings of
Droop-Controlled Islanded Microgrid (DCIMG) is proposed. The objective functions are
minimization of system losses in DCIMG while meeting all the power flow constraints.
Therefore, this approach requires a powerful power flow tool to determine objective func tion values. The resultant single-objective optimization problem is solved using a powerful
variant of Differential Evolution, named as ESHADE. The proposed approach is tested
on a several DCIMG test system. The obtained outcomes show the superior performance
of the proposed algorithm.