{"title":"2019冠状病毒病和其他冲击对巴布亚新几内亚粮食经济的影响:多市场模拟分析","authors":"X. Diao, P. Dorosh, Peixun Fang, E. Schmidt","doi":"10.2139/ssrn.3789126","DOIUrl":null,"url":null,"abstract":"Understanding how the Papua New Guinea (PNG) agricultural economy and associated household consumption is affected by climate, market and other shocks requires attention to linkages and substitution effects across various products and the markets in which they are traded. In this study, we use a multi-market simulation model of the PNG food economy that explicitly includes production, consumption, external trade and prices of key agricultural commodities to quantify the likely impacts of a set of potential shocks on household welfare and food security in PNG. <br><br>In this study, we use a multi-market simulation model of the PNG food economy that explicitly includes production, consumption, external trade and prices of key agricultural commodities to quantify the likely impacts of a set of potential shocks on household welfare and food security in PNG. We have built the model to be flexible in order to explore different potential scenarios and then identify where and how households are most affected by an unexpected shock. The model is designed using region and country-level data sources that inform the structure of the PNG food economy, allowing for a data-driven evaluation of potential impacts on agricultural production, food prices, and food consumption. Thus, as PNG confronts different unexpected challenges within its agricultural economy, the model presented in this paper can be adapted to evaluate the potential impact and necessary response by geographic region of an unexpected economic shock on the food economy of the country. <br><br>We present ten simulations modeling the effects of various shocks on PNG’s economy. The first group of scenarios consider the effects of shocks to production of specific agricultural commodities including: 1) a decrease on maize and sorghum output due to Fall Armyworm; 2) reduction in pig production due to a potential outbreak of African Swine Fever; 3) decline in sweet potato production similar to the 2015/16 El Niño Southern Oscillation (ENSO) climate shock; and 4) a decline in poultry production due to COVID-19 restrictions on domestic mobility and trade. A synopsis of this report, which focuses on the COVID-19 related shocks on the PNG economy is also available online (Diao et al., 2020).<br><br>The second group of simulations focus on COVID-19-related changes in international prices, increased marketing costs in international and domestic trade, and reductions in urban incomes. We simulate a 1) 30 percent increase in the price of imported rice, 2) a 30 percent decrease in world prices for major PNG agricultural exports, 3) higher trade transaction costs due to restrictions on the movement of people (traders) and goods given social distancing measures of COVID-19, and 4) potential economic recession causing urban household income to fall by 10 percent. Finally, the last simulation considers the combined effect of all COVID-19 related shocks combining the above scenarios into a single simulation. <br><br>A key result of the analysis is that urban households, especially the urban poor, are particularly vulnerable to shocks related to the COVID-19 pandemic. Lower economic activity in urban areas (assumed to reduce urban non-agricultural incomes by 10 percent), increases in marketing costs due to domestic trade disruptions, and 30 percent higher imported rice prices combine to lower urban incomes by almost 15 percent for both poor and non-poor urban households. Urban poor households, however, suffer the largest drop in calorie consumption - 19.8 percent, compared to a 15.8 percent decline for urban non-poor households. Rural households are much less affected by the COVID-19 related shocks modeled in these simulations. Rural household incomes, affected mainly by reduced urban demand and market disruptions, fall by only about four percent. Nonetheless, calorie consumption for the rural poor and non-poor falls by 5.5 and 4.2 percent, respectively.","PeriodicalId":20373,"journal":{"name":"Political Economy - Development: Health eJournal","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2021-02-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Effects of COVID-19 and Other Shocks on Papua New Guinea's Food Economy: A Multi-Market Simulation Analysis\",\"authors\":\"X. Diao, P. Dorosh, Peixun Fang, E. 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We have built the model to be flexible in order to explore different potential scenarios and then identify where and how households are most affected by an unexpected shock. The model is designed using region and country-level data sources that inform the structure of the PNG food economy, allowing for a data-driven evaluation of potential impacts on agricultural production, food prices, and food consumption. Thus, as PNG confronts different unexpected challenges within its agricultural economy, the model presented in this paper can be adapted to evaluate the potential impact and necessary response by geographic region of an unexpected economic shock on the food economy of the country. <br><br>We present ten simulations modeling the effects of various shocks on PNG’s economy. The first group of scenarios consider the effects of shocks to production of specific agricultural commodities including: 1) a decrease on maize and sorghum output due to Fall Armyworm; 2) reduction in pig production due to a potential outbreak of African Swine Fever; 3) decline in sweet potato production similar to the 2015/16 El Niño Southern Oscillation (ENSO) climate shock; and 4) a decline in poultry production due to COVID-19 restrictions on domestic mobility and trade. A synopsis of this report, which focuses on the COVID-19 related shocks on the PNG economy is also available online (Diao et al., 2020).<br><br>The second group of simulations focus on COVID-19-related changes in international prices, increased marketing costs in international and domestic trade, and reductions in urban incomes. We simulate a 1) 30 percent increase in the price of imported rice, 2) a 30 percent decrease in world prices for major PNG agricultural exports, 3) higher trade transaction costs due to restrictions on the movement of people (traders) and goods given social distancing measures of COVID-19, and 4) potential economic recession causing urban household income to fall by 10 percent. Finally, the last simulation considers the combined effect of all COVID-19 related shocks combining the above scenarios into a single simulation. <br><br>A key result of the analysis is that urban households, especially the urban poor, are particularly vulnerable to shocks related to the COVID-19 pandemic. Lower economic activity in urban areas (assumed to reduce urban non-agricultural incomes by 10 percent), increases in marketing costs due to domestic trade disruptions, and 30 percent higher imported rice prices combine to lower urban incomes by almost 15 percent for both poor and non-poor urban households. Urban poor households, however, suffer the largest drop in calorie consumption - 19.8 percent, compared to a 15.8 percent decline for urban non-poor households. Rural households are much less affected by the COVID-19 related shocks modeled in these simulations. Rural household incomes, affected mainly by reduced urban demand and market disruptions, fall by only about four percent. 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引用次数: 0
摘要
了解巴布亚新几内亚农业经济和相关家庭消费如何受到气候、市场和其他冲击的影响,需要关注各种产品及其交易市场之间的联系和替代效应。在本研究中,我们使用巴布亚新几内亚粮食经济的多市场模拟模型,明确包括主要农产品的生产、消费、对外贸易和价格,以量化一系列潜在冲击对巴布亚新几内亚家庭福利和粮食安全的可能影响。在本研究中,我们使用巴布亚新几内亚粮食经济的多市场模拟模型,明确包括主要农产品的生产、消费、对外贸易和价格,以量化一系列潜在冲击对巴布亚新几内亚家庭福利和粮食安全的可能影响。我们建立了灵活的模型,以便探索不同的潜在情况,然后确定家庭在哪里以及如何受到意外冲击的最大影响。该模型利用区域和国家一级的数据源设计,这些数据源提供了巴布亚新几内亚粮食经济结构的信息,允许对农业生产、粮食价格和粮食消费的潜在影响进行数据驱动的评估。因此,由于巴布亚新几内亚在其农业经济中面临不同的意外挑战,本文提出的模型可以适用于评估意外经济冲击对该国粮食经济的潜在影响和按地理区域作出的必要反应。我们提出了十个模拟模拟各种冲击对巴布亚新几内亚经济的影响。第一组情景考虑了冲击对特定农产品生产的影响,包括:1)秋粘虫导致玉米和高粱产量下降;2)由于可能爆发非洲猪瘟导致生猪产量减少;3)甘薯产量下降与2015/16年厄尔Niño南方涛动(ENSO)气候冲击相似;4)由于COVID-19对国内流动和贸易的限制,家禽产量下降。该报告的摘要也可在网上获得(Diao et al., 2020),重点关注与COVID-19相关的冲击对巴布亚新几内亚经济的影响。第二组模拟侧重于与covid -19相关的国际价格变化、国际和国内贸易营销成本增加以及城市收入减少。我们模拟了以下情况:1)进口大米价格上涨30%,2)巴布亚新几内亚主要农产品出口的世界价格下跌30%,3)由于COVID-19的社会距离措施,人员(贸易商)和货物流动受到限制,贸易交易成本上升,以及4)潜在的经济衰退导致城市家庭收入下降10%。最后,最后一个模拟考虑了所有与COVID-19相关的冲击的综合影响,将上述情景合并为一个模拟。分析的一个关键结果是,城市家庭,特别是城市贫困人口,特别容易受到与COVID-19大流行相关的冲击。城市地区经济活动减少(假定会使城市非农业收入减少10%),国内贸易中断导致营销成本增加,进口大米价格上涨30%,这些因素加在一起,使城市贫困和非贫困家庭的收入减少了近15%。然而,城市贫困家庭的卡路里消费量下降幅度最大,为19.8%,而城市非贫困家庭的卡路里消费量下降幅度为15.8%。在这些模拟中,农村家庭受COVID-19相关冲击的影响要小得多。农村家庭收入主要受到城市需求减少和市场混乱的影响,仅下降了约4%。然而,农村贫困人口和非贫困人口的卡路里消费量分别下降了5.5%和4.2%。
Effects of COVID-19 and Other Shocks on Papua New Guinea's Food Economy: A Multi-Market Simulation Analysis
Understanding how the Papua New Guinea (PNG) agricultural economy and associated household consumption is affected by climate, market and other shocks requires attention to linkages and substitution effects across various products and the markets in which they are traded. In this study, we use a multi-market simulation model of the PNG food economy that explicitly includes production, consumption, external trade and prices of key agricultural commodities to quantify the likely impacts of a set of potential shocks on household welfare and food security in PNG.
In this study, we use a multi-market simulation model of the PNG food economy that explicitly includes production, consumption, external trade and prices of key agricultural commodities to quantify the likely impacts of a set of potential shocks on household welfare and food security in PNG. We have built the model to be flexible in order to explore different potential scenarios and then identify where and how households are most affected by an unexpected shock. The model is designed using region and country-level data sources that inform the structure of the PNG food economy, allowing for a data-driven evaluation of potential impacts on agricultural production, food prices, and food consumption. Thus, as PNG confronts different unexpected challenges within its agricultural economy, the model presented in this paper can be adapted to evaluate the potential impact and necessary response by geographic region of an unexpected economic shock on the food economy of the country.
We present ten simulations modeling the effects of various shocks on PNG’s economy. The first group of scenarios consider the effects of shocks to production of specific agricultural commodities including: 1) a decrease on maize and sorghum output due to Fall Armyworm; 2) reduction in pig production due to a potential outbreak of African Swine Fever; 3) decline in sweet potato production similar to the 2015/16 El Niño Southern Oscillation (ENSO) climate shock; and 4) a decline in poultry production due to COVID-19 restrictions on domestic mobility and trade. A synopsis of this report, which focuses on the COVID-19 related shocks on the PNG economy is also available online (Diao et al., 2020).
The second group of simulations focus on COVID-19-related changes in international prices, increased marketing costs in international and domestic trade, and reductions in urban incomes. We simulate a 1) 30 percent increase in the price of imported rice, 2) a 30 percent decrease in world prices for major PNG agricultural exports, 3) higher trade transaction costs due to restrictions on the movement of people (traders) and goods given social distancing measures of COVID-19, and 4) potential economic recession causing urban household income to fall by 10 percent. Finally, the last simulation considers the combined effect of all COVID-19 related shocks combining the above scenarios into a single simulation.
A key result of the analysis is that urban households, especially the urban poor, are particularly vulnerable to shocks related to the COVID-19 pandemic. Lower economic activity in urban areas (assumed to reduce urban non-agricultural incomes by 10 percent), increases in marketing costs due to domestic trade disruptions, and 30 percent higher imported rice prices combine to lower urban incomes by almost 15 percent for both poor and non-poor urban households. Urban poor households, however, suffer the largest drop in calorie consumption - 19.8 percent, compared to a 15.8 percent decline for urban non-poor households. Rural households are much less affected by the COVID-19 related shocks modeled in these simulations. Rural household incomes, affected mainly by reduced urban demand and market disruptions, fall by only about four percent. Nonetheless, calorie consumption for the rural poor and non-poor falls by 5.5 and 4.2 percent, respectively.