Please use this identifier to cite or link to this item: http://repository.ipb.ac.id/handle/123456789/45168
Title: Studi Sistem Deteksidini untuk Manajemen Krisis Pangan dengan Simulasi Model Dinamis dan Komputasi Cerdas (Study of Early Waning System for Food Crisis Management with Dynamic Model Simulation and Intelligent Computation)
Other Titles: Prosiding Seminar Hasil Penelitian IPB 2009 Buku 5 Bidang Teknologi dan Rekayasa Pangan
Authors: Seminar, Kudang Boro
Marimin
Andarwulan, Nuri
Farida Belawati, Yayuk
Herdiyenny, Yenny
Solahudin, Mohamad
Keywords: Early Warning System (EWS), food crisis detection, intteligent computation, system dynamics.
Issue Date: 2009
Publisher: IPB (Bogor Agricultural University)
Abstract: This research has developed an Early Warning System (EWS) integrated with dynamic system simulation and intelligent computation using Artificial Neural Network (ANN) to detect the level of food crisis. The system has been tested and validated using a set of data comprising 28 provinces and 265 districts (kabupaten). The data used for training consits of 167 elements, and the remaing data is used for testing and validation. The accuracy of the sistem to detect the level of food crisis is 96.9%, with mean square error (MSE) equal to 0.11. Food crisis factors and parameters together with variables derived from the identified parameters have been formulated from testing and validation of the system prototype and the analysis of the system output of ANN. It can the be identified that the weight priority of all variables are shown in decreasing order with respect to weight as follows: 1). Natural Disaster (X5), 2). Pepople under poverty line (X4), 3). Infant mortality (X3), 4). IHSG (X10), 5). Infant underweight (X2), 6). Price of rice (X8), 7). Area without forest (X6), 8). Normative Consumption Ratio (XI), 9). Annual Rainfall (X7), and 10). Dollars Exchange (X9). Factor interactios that relate to food food vulnerability is complex, dynamic, and probalistic involving multi aspects and multi dimensions. Dynamic system simulation unified with an intelligent computation using Artificial Neural Network (ANN) can be utilized to cope with criticallity of such factor interactions that influence food crisis.
URI: http://repository.ipb.ac.id/handle/123456789/45168
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