Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index

The Rift Valley fever (RVF) disease, a climate-sensitive zoonosis, causes 100% abortions and death in infected animals. This shock has an immediate effect on the food prices, particularly the animal-sourced foods. This study used an Interrupted Time Series (ITS) approach combined with Auto regressiv...

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Main Authors: Mulwa, D., Bett, Bernard K., Misinzo, G.
Format: Journal Article
Language:Inglés
Published: Elsevier 2025
Subjects:
Online Access:https://hdl.handle.net/10568/177539
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author Mulwa, D.
Bett, Bernard K.
Misinzo, G.
author_browse Bett, Bernard K.
Misinzo, G.
Mulwa, D.
author_facet Mulwa, D.
Bett, Bernard K.
Misinzo, G.
author_sort Mulwa, D.
collection Repository of Agricultural Research Outputs (CGSpace)
description The Rift Valley fever (RVF) disease, a climate-sensitive zoonosis, causes 100% abortions and death in infected animals. This shock has an immediate effect on the food prices, particularly the animal-sourced foods. This study used an Interrupted Time Series (ITS) approach combined with Auto regressive Integrated Moving Average (ARIMA) model to model and assess the effects of the 2018 and 2021 RVF outbreaks on Kenya’s food price on economic disruptions. Data from several Kenyan cities, including Nairobi, Kisumu, Eldoret, and Mombasa, were analyzed to identify inflation trends across different markets. The findings clearly show significant price index fluctuations, with inflation escalating following critical RVF outbreak shock periods, particularly during the outbreak periods. In Nairobi, the lowest recorded value was -14.970, 25% of the observations were below -4.527, the middle value was 2.475, the average value was 6.014, 75% of the observations were below 10.742, and the highest recorded value was 51.450. In Wajir town for instance, the lowest recorded value was -14.590, 25% of the observations were below -4.875, the middle value was 1.230, the average value was 6.507, 75% of the observations were below 13.707, and the highest recorded value was 13.707. The ARIMA model successfully identified these changes, highlighting the distinct effects across all regions, with some areas exhibiting significant forecasting inaccuracies. Different ARIMA models with different orders were obtained including ARIMA(3,1,2)(0,0,1)[12].This study generates new knowledge, provides critical insights into market dynamics, and presents a predictive framework for dealing with future economic disruptions in Kenya and elsewhere. Policymakers can use these findings to create targeted strategies for stabilizing food prices and ensuring economic resilience during future RVF outbreaks.
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spelling CGSpace1775392025-11-06T05:07:36Z Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index Mulwa, D. Bett, Bernard K. Misinzo, G. food prices rift valley fever The Rift Valley fever (RVF) disease, a climate-sensitive zoonosis, causes 100% abortions and death in infected animals. This shock has an immediate effect on the food prices, particularly the animal-sourced foods. This study used an Interrupted Time Series (ITS) approach combined with Auto regressive Integrated Moving Average (ARIMA) model to model and assess the effects of the 2018 and 2021 RVF outbreaks on Kenya’s food price on economic disruptions. Data from several Kenyan cities, including Nairobi, Kisumu, Eldoret, and Mombasa, were analyzed to identify inflation trends across different markets. The findings clearly show significant price index fluctuations, with inflation escalating following critical RVF outbreak shock periods, particularly during the outbreak periods. In Nairobi, the lowest recorded value was -14.970, 25% of the observations were below -4.527, the middle value was 2.475, the average value was 6.014, 75% of the observations were below 10.742, and the highest recorded value was 51.450. In Wajir town for instance, the lowest recorded value was -14.590, 25% of the observations were below -4.875, the middle value was 1.230, the average value was 6.507, 75% of the observations were below 13.707, and the highest recorded value was 13.707. The ARIMA model successfully identified these changes, highlighting the distinct effects across all regions, with some areas exhibiting significant forecasting inaccuracies. Different ARIMA models with different orders were obtained including ARIMA(3,1,2)(0,0,1)[12].This study generates new knowledge, provides critical insights into market dynamics, and presents a predictive framework for dealing with future economic disruptions in Kenya and elsewhere. Policymakers can use these findings to create targeted strategies for stabilizing food prices and ensuring economic resilience during future RVF outbreaks. 2025-12 2025-11-04T11:32:52Z 2025-11-04T11:32:52Z Journal Article https://hdl.handle.net/10568/177539 en Limited Access Elsevier Mulwa, D., Bett, B. and Misinzo, G. 2025. Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index. Food and Humanity 5: 100856.
spellingShingle food prices
rift valley fever
Mulwa, D.
Bett, Bernard K.
Misinzo, G.
Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index
title Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index
title_full Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index
title_fullStr Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index
title_full_unstemmed Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index
title_short Forecasting and modelling of Rift Valley fever outbreaks using Autoregressive Integrated Moving Average (ARIMA) models: Evaluating the impact of 2018 and 2021 Rift Valley fever outbreaks on Kenyan food price index
title_sort forecasting and modelling of rift valley fever outbreaks using autoregressive integrated moving average arima models evaluating the impact of 2018 and 2021 rift valley fever outbreaks on kenyan food price index
topic food prices
rift valley fever
url https://hdl.handle.net/10568/177539
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