Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks

碩士 === 育達商業技術學院 === 資訊管理所 === 97 === Growing high in the mountains at an elevation of 1500-2000 meters, it requires a temperature range of 15-20 degrees Celsius. This protophyte perennial is a member of the family orchidaceous. It has one bulb and only one leaf. It is sold in bulb form, and it bl...

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Main Authors: Shih,chia-wen, 石佳雯
Other Authors: 侯成一
Format: Others
Language:zh-TW
Published: 2009
Online Access:http://ndltd.ncl.edu.tw/handle/19896201774209095615
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spelling ndltd-TW-097YDU003960202015-11-20T04:18:47Z http://ndltd.ncl.edu.tw/handle/19896201774209095615 Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks 運用倒傳遞神經網路於一葉蘭市場供需預測 Shih,chia-wen 石佳雯 碩士 育達商業技術學院 資訊管理所 97 Growing high in the mountains at an elevation of 1500-2000 meters, it requires a temperature range of 15-20 degrees Celsius. This protophyte perennial is a member of the family orchidaceous. It has one bulb and only one leaf. It is sold in bulb form, and it blooms before its leaf forms. At harvesting time, nursery personnel have always had to invest much capital to stock Pleione Formosana bulbs for the traditional orchid industry. However, the price of Pleione Formosana bulbs changes daily based on market supply and demand. This fluctuation makes it difficult to know how many bulbs to stock at any given time. However, if information technology could be used to assist operating personnel to forecast the demand for the flower in the near future, they can buy at a low price and achieve the objective of short-term stock, according to short-term demands, without misjudging the amount to be bought. Thus, they not only can increase their profit, but also enable customers to get fresh bulbs at a low price, thereby assisting them to reduce material costs. This research presents a market demand forecasting system for the Pleione Formosana Hayata Orchid product to assist traditional market personnel to forecast customer demand in the near future. The back propagation neural network algorithm will be used in the Pleione Formosana Hayata Orchid product market demand forecasting system so that the order demands in the future can be forecast on the basis of information on existing orders. 侯成一 2009 學位論文 ; thesis 41 zh-TW
collection NDLTD
language zh-TW
format Others
sources NDLTD
description 碩士 === 育達商業技術學院 === 資訊管理所 === 97 === Growing high in the mountains at an elevation of 1500-2000 meters, it requires a temperature range of 15-20 degrees Celsius. This protophyte perennial is a member of the family orchidaceous. It has one bulb and only one leaf. It is sold in bulb form, and it blooms before its leaf forms. At harvesting time, nursery personnel have always had to invest much capital to stock Pleione Formosana bulbs for the traditional orchid industry. However, the price of Pleione Formosana bulbs changes daily based on market supply and demand. This fluctuation makes it difficult to know how many bulbs to stock at any given time. However, if information technology could be used to assist operating personnel to forecast the demand for the flower in the near future, they can buy at a low price and achieve the objective of short-term stock, according to short-term demands, without misjudging the amount to be bought. Thus, they not only can increase their profit, but also enable customers to get fresh bulbs at a low price, thereby assisting them to reduce material costs. This research presents a market demand forecasting system for the Pleione Formosana Hayata Orchid product to assist traditional market personnel to forecast customer demand in the near future. The back propagation neural network algorithm will be used in the Pleione Formosana Hayata Orchid product market demand forecasting system so that the order demands in the future can be forecast on the basis of information on existing orders.
author2 侯成一
author_facet 侯成一
Shih,chia-wen
石佳雯
author Shih,chia-wen
石佳雯
spellingShingle Shih,chia-wen
石佳雯
Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks
author_sort Shih,chia-wen
title Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks
title_short Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks
title_full Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks
title_fullStr Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks
title_full_unstemmed Pleione Formosana Orchid Market Demand Forecasting System Using ural Networks
title_sort pleione formosana orchid market demand forecasting system using ural networks
publishDate 2009
url http://ndltd.ncl.edu.tw/handle/19896201774209095615
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