IoT based Smart Small Scale Solar Energy Planning using Evolutionary Fuzzy Association Rule Mining
Created by W.Langdon from
gp-bibliography.bib Revision:1.8110
- @InProceedings{Wedashwara:2020:ICADEIS,
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author = "Wirarama Wedashwara and I {Wayan Agus Arimbawa} and
Andy {Hidayat Jatmika} and Ariyan Zubaidi and
Tatang Mulyana",
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title = "{IoT} based Smart Small Scale Solar Energy Planning
using Evolutionary Fuzzy Association Rule Mining",
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booktitle = "2020 International Conference on Advancement in Data
Science, E-learning and Information Systems (ICADEIS)",
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year = "2020",
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month = "20-21 " # oct,
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address = "Lombok, Indonesia",
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keywords = "genetic algorithms, genetic programming, EFARM, Solar
Energy",
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isbn13 = "978-1-7281-8272-8",
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DOI = "doi:10.1109/ICADEIS49811.2020.9276905",
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size = "6 pages",
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abstract = "Along-Track Stereo Sun Glitter (ATSSG) shows Indonesia
especially Lombok has high solar energy potential, not
only on large scale but also small scale such as for
hybrid-based electricity savings. The amount of energy
that can be saved through solar power is difficult to
predict without measurement and planning. The paper
proposed the Smart Small Scale Solar Energy Planning
using Internet of Things (IoT) by collaborating
Wireless Sensor Network (WSN) as data collector and
Evolutionary Fuzzy Association Rule Mining (EFARM) as
Decision Support System (DSS). WSN collects data
generated solar energy by the solar panel and direct
current (DC) energy usage by electrical devices. Then
both collected data are processed by EFARM through an
interpretation of tree-based fuzzy rule extractor to
conclude the potential of energy efficiency. The
Evaluation is carried out for two weeks using two solar
panels with light intensity, temperature, and humidity
sensors as a comparison for environment condition and
generated energy. Through evaluation EFARM has shown
the capability to Interpreted patterns of generated
energy and energy consumption by achieving a high
average of supports(0.247,0.236),
confidence(0.393,0.219) and scores(0.335,0.127) for
full-length rules; describe the rules correlation
between generated energy and energy consumption to
conclude the potential of energy efficiency, and make
decision support for the number of panels and batteries
to be added with relatively low mean square error
(6.094).",
-
notes = "Also known as \cite{9276905}",
- }
Genetic Programming entries for
Wirarama Wedashwara
I Wayan Agus Arimbawa
Andy Hidayat Jatmika
Ariyan Zubaidi
Tatang Mulyana
Citations