Quantum Neural Network Application for Weather Forecasting
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Abstract
Weather forecasts are made by collecting quantitative data about the current state of
the atmosphere and using scientific understanding of atmospheric processes to project
how the atmosphere will evolve. This research examines and analyzes the use of
Quantum neural networks as a forecasting tool. Specifically, neural network’s features
such as parallel distributed processing, self-learning and fault tolerance are explored
and the idea is then to combine Quantum Computation with the Neural Networks
producing Quantum Neural Networks. Quantum computing is a proposed means of
using quantum-mechanical effects to achieve efficient computation. The potential
power of a quantum computing is in the superposition of states, allowing
exponentially many computations to be done in parallel. During a calculation, the bits
(called qubits) that are being manipulated are never in a definite one or zero state,
instead can be thought of as being both a one and a zero simultaneously, which allows
quantum neural networks to explore many solutions at the same time. While only
briefly discussing neural network theory, this research determines the feasibility and
practicality of using Quantum neural networks as a forecasting tool for the weather
system. From the simulation results, it can be seen that the proposed model produces a
reasonable accuracy in training which is conducted with 5 parameters (100 days) of
the recent temperature, dew point, humidity, sea level pressure, wind speed with
historical data. Once the model is trained, it is used to forecast the weather data for
next time period, each time forecasting one point ahead.
