Optimization of Environmentally Powered Wireless Sensor Networks for Efficient Energy Harvesting
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Abstract
Focusing on environmentally powered Wireless Sensor Networks (WSNs),
this thesis studies optimized operation of individual sensor node in terms
of average duty cycle. In particular, the focus lies in gaining high average
duty cycle with high stability. To achieve this objective, an energy neu-
tral approach based efficient power management system is introduced and
investigated in different working conditions.
WSNs deployed in ad hoc manner comprise of numerous sensing nodes organised in a
network for the sake of checking and balancing the environmental factors. Each node
has sensing, computation, communication and locomotion capabilities but operates with
limited battery life. Energy harvesting is a way of powering these WSNs by harvesting
energy from the environment. Using harvesting energy as source, certain considerations
are different from that battery operated networks. Nondeterministic energy availability
with respect to time is the reason behind these differences which put a limit on the
maximum rate at which energy can be used. Thus, power management is of prime
importance in self-powered networks.
The thesis begins with development of efficient solar forecasting algorithm for accurate
estimation of energy availability. Reliable knowledge of solar radiation is essential for in-
formed design, deployment planning and optimal management of energy in rechargeable
sensor networks. In the proposed work, an optimized Pro-Energy algorithm is developed
using level and trend factors in time series analysis for future solar irradiance estimation.
The performance of proposed algorithm has been compared with EWMA, WCMA, and
Pro-Energy on the basis of prediction error. The problem of solar irradiance forecasting
has been further addressed by machine learning methodologies over historical data set.
In proposed work, forecasts have been done using FoBa, leapForward, spikeslab, Cubist
and bagEarthGCV models. To achieve more precise and consistent forecast, four Sta-
tistical Ensemble (SE) approaches have been presented. To validate the effectiveness of
these methodologies, a series of experimental evaluations have been presented in terms
of forecast accuracy, correlation coefficient and Root Mean Square Error (RMSE). The
R interface has been used as simulation platform for these evaluations.
Based on forecasted solar energy profiles, an integrated approach of energy assignment
principles with adaptive duty cycling has been introduced to efficiently utilize the avail-
able energy. For this purpose, four factors of the system including energy generation rate,
energy consumption rate, storage and controlled energy allotment to the sensor node havebeen formulated in to a theoretical model. The dynamic programming has also been used
for theoretical analysis of the system. The analytical models of solar powered wireless
sensor node have been used to validate the effectiveness of proposed work. The extensive
simulations have been conducted on real time solar energy profiles in terms of magnitude
and stability of sensors average duty cycle. The experimental results shows that the
proposed approach offers perpetual node operation with high energy efficiency.
