:: Artikel Jurnal :: Kembali

Artikel Jurnal :: Kembali

Artificial neural network trained simultaneous extent analysis as a logical tool in computation of urban heat island intensity

Rajesh Gopinath, Vrinda Thippesh (Thammasat University, 2018)

 Abstrak

ABSTRAK
Researchers have evolved several empirical studies with numerous statistical operations for processing of vast Climatic data. However, certain short comings exist in the methodologies as the efforts to quantify the high resolution observations is at most times inappropriate, inaccurate, tedious, complex and expensive. One of the most documented anthropogenic impressions on urban climate is the Urban Heat Island Intensity (U.H.I.I.). To facilitate a simpler and yet scientific understanding of this urban phenomenon: the current study introduces an accurate approach in terms of estimation. The present effort highlights the development of a new technique Simultaneous Extent Analysis (S.E.A.) as a precise representation of U.H.I.I., from the population characteristics of a huge parallel variable climatic database. It orients about the forecasting more specifically with the inception of Neural Network, and training upon a three year continuous knowledge database, using Levenberg Marquardt Backward Propagation method, and the Inference engine as Backward Chaining. The climatic data was a part of meteorological studies collected at half hourly intervals to analyze U.H.I.I. at Bangalore (India). The knowledge base upon training was tested and validated with the real time data for forecasting. The coefficient of correlation of 0.93 between the predicted and actual values is extremely good, thereby depicting that the efficiency of the model is good.

 Metadata

No. Panggil : 607 STA 23:4 (2018)
Entri utama-Nama orang :
Entri tambahan-Nama orang :
Penerbitan : Pathum Thani: Thammasat University, 2018
Sumber Pengatalogan : LibUI eng rda
ISSN : 25869000
Majalah/Jurnal : Science and Technology Asia
Volume : Vol. 23, No. 14, Oct-Dec 2018: Hal. 18-22
Tipe Konten : text
Tipe Media : unmediated (rda media)
Tipe Carrier : volume
Akses Elektronik :
Institusi Pemilik : Universitas Indonesia
Lokasi : Perpustakaan UI, Lantai 4, R. Koleksi Jurnal
  • Ketersediaan
  • Ulasan
No. Panggil No. Barkod Ketersediaan
607 STA 23:4 (2018) 03-19-118197543 TERSEDIA
Ulasan:
Tidak ada ulasan pada koleksi ini: 20495825