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Multimedia Tools and Applications
springer
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Abstract: |
In this communication, a fractional order design and numerical form of the solutions are
presented for numerical simulations of heterogeneous mosquito model. The use of the
fractional order derivatives is exploited to observe more accurate and exhaustive performances
of the numerical simulation of the model. The novel design of the fractional order
heterogeneous mosquito differential system is analyzed with stochastic solver based on
the internet of things (IoT) technologies, represented with four categories i.e., normal
individuals, people with reflex behavior, panic behavior and controlled behavior based
differential system. The solutions of the novel design of the fractional order system are
presented by using the stochastic paradigm of artificial neural network (ANN) procedures
along with the Scaled Conjugate Gradient (SCG), i.e., ANN-SCG, for learning of
weights. In ANN-SCG implementation, the data statistics are picked as 78% for training,
11% for both authorization and testing samples to approximate the solutions. The
accuracy of the ANN-SCG technique is seen by correlation of the determined outcomes
and the information base on Adams-Bashforth-Moulton method based standard solutions.
To achieve the capacity, legitimacy, consistent quality, fitness, and accuracy of the ANNSCG
strategy, the reproductions-based error histograms (EHs), MSE, regression, and
state transitions (STs) are used for extensive experimentations.
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