Time Series Analysis and Prediction of Electricity Consumption of Health Care Institution Using ARIMA Model

Author(s):  
Harveen Kaur ◽  
Sachin Ahuja
Author(s):  
Mohammad Karim Ahmadzai

Wheat is the most important food crop in Afghanistan, whether consumed by the bulk of the people or used in various sectors. The problem is that Afghanistan has a significant shortfall of wheat between domestic production and consumption. Thus, the present study looks at the issue of meeting self-sufficiency for the whole population due to wheat shortages. To do so, we employ time series analysis, which can produce a highly exact short-run prediction for a significant quantity of data on the variables in question. The ARIMA models are versatile and widely utilised in univariate time series analysis. The ARIMA model combines three processes: I the auto-regressive (AR) process, (ii) the differencing process, and (iii) the moving average (MA) process. These processes are referred to as primary univariate time series models in statistical literature and are widely employed in various applications. Where predicting future wheat requirements is one of the most important tools that decision-makers may use to assess wheat requirements and then design measures to close the gap between supply and consumption. The present study seeks to forecast Production, Consumption, and Population for the period 2002-2017 and estimate the values of these variables between 2002 and 2017. (2018-2030).  


2019 ◽  
Vol 179 (11) ◽  
pp. 1501 ◽  
Author(s):  
Emily G. McDonald ◽  
Nandini Dendukuri ◽  
Charles Frenette ◽  
Todd C. Lee

2019 ◽  
Vol 24 (2) ◽  
pp. 73-80 ◽  
Author(s):  
Arash Rashidian ◽  
Sedigheh Salavati ◽  
Hanan Hajimahmoodi ◽  
Mehrnaz Kheirandish

Objectives To evaluate the effects of rural health insurance and family physician reforms on hospitalization rates in Iran. Methods An interrupted time series analysis of national monthly hospitalization rates in Iran (2003–2014), starting from two years before the intervention. Segmented regression analysis was used to assess the effects of the reforms on hospitalization rates. Results The analyses showed that hospitalization rates increased one year after the initiation of the reforms: 1.55 (95% CI: 1.24–1.86) additional hospitalizations per 1000 rural inhabitants per month (‘immediate effect’). This increase was followed by a further gradual increase of 0.034 per 1000 inhabitants per month (95% CI: 0.02–0.04). The gradual monthly increase continued for two years after the reforms. The higher hospitalization rates were maintained in the following years. We observed a significant increase in hospitalization rates at a national level in rural areas that continued for over 10 years after the policy implementation. Conclusion Primary health care reforms are often proposed for their efficiency outcomes (i.e. reduction in costs and use of hospitals) as well as their impact on improving health outcomes. We demonstrated that in populations with unmet needs, such reforms are likely to substantially increase hospitalization rates. This is an important consideration for successful design and implementation of interventions aimed at achieving universal health coverage in low- and middle-income countries.


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