Redirigiendo al acceso original de articulo en 21 segundos...
Inicio  /  Future Internet  /  Vol: 16 Par: 1 (2024)  /  Artículo
ARTÍCULO
TITULO

Latent Autoregressive Student-t Prior Process Models to Assess Impact of Interventions in Time Series

Patrick Toman    
Nalini Ravishanker    
Nathan Lally and Sanguthevar Rajasekaran    

Resumen

With the advent of the ?Internet of Things? (IoT), insurers are increasingly leveraging remote sensor technology in the development of novel insurance products and risk management programs. For example, Hartford Steam Boiler?s (HSB) IoT freeze loss program uses IoT temperature sensors to monitor indoor temperatures in locations at high risk of water-pipe burst (freeze loss) with the goal of reducing insurances losses via real-time monitoring of the temperature data streams. In the event these monitoring systems detect a potentially risky temperature environment, an alert is sent to the end-insured (business manager, tenant, maintenance staff, etc.), prompting them to take remedial action by raising temperatures. In the event that an alert is sent and freeze loss occurs, the firm is not liable for any damages incurred by the event. For the program to be effective, there must be a reliable method of verifying if customers took appropriate corrective action after receiving an alert. Due to the program?s scale, direct follow up via text or phone calls is not possible for every alert event. In addition, direct feedback from customers is not necessarily reliable. In this paper, we propose the use of a non-linear, auto-regressive time series model, coupled with the time series intervention analysis method known as causal impact, to directly evaluate whether or not a customer took action directly from IoT temperature streams. Our method offers several distinct advantages over other methods as it is (a) readily scalable with continued program growth, (b) entirely automated, and (c) inherently less biased than human labelers or direct customer response. We demonstrate the efficacy of our method using a sample of actual freeze alert events from the freeze loss program.

 Artículos similares

       
 
Puzhen Huo, Peng Lu, Bin Cheng, Limin Zhang, Qingkai Wang and Zhijun Li    
It is challenging to obtain the ice phenology for a lake covered with a vast area of aquatic (shallow lake wetlands) using optical satellite data because possible clouds above the lake could contaminate the result. We developed a new method to tackle thi... ver más
Revista: Water

 
Aytaç Kubilay, John Bourcet, Jessica Gravel, Xiaohai Zhou, Travis V. Moore, Michael A. Lacasse, Jan Carmeliet and Dominique Derome    
Parts of the building envelope that frequently receive high amounts of rain are usually exposed to a higher risk of deterioration due to moisture. Determination of such locations can thus help with the assessment of moisture-induced damage risks. This st... ver más
Revista: Buildings

 
Junfeng Chen, Yizhao Wei, Xiping Zhao, Jing Xue, Shuyuan Xu and Qi Du    
Straw mulching is an effective agricultural technology to reduce soil water loss in arid and semi-arid areas. Herein, the soil temperature and soil water content of bare land (LD) and 5 cm (JG5), 10 cm (JG10), 15 cm (JG15), 20 cm (JG20) and 30 cm (JG30) ... ver más
Revista: Water

 
Kazuhisa A. Chikita, Hideo Oyagi, Tadao Aiyama, Misao Okada, Hideyuki Sakamoto and Toshihisa Itaya    
A deep temperate lake, Lake Kuttara, Hokkaido, Japan (148 m deep at maximum) was completely ice-covered every winter in the 20th century. However, ice-free conditions of the lake over winter occurred three times in the 21st century, which is probably due... ver más
Revista: Hydrology

 
Bailey A. Hewitt, Lianna S. Lopez, Katrina M. Gaibisels, Alyssa Murdoch, Scott N. Higgins, John J. Magnuson, Andrew M. Paterson, James A. Rusak, Huaxia Yao and Sapna Sharma    
Lake ice phenology (timing of ice breakup and freeze up) is a sensitive indicator of climate. We acquired time series of lake ice breakup and freeze up, local weather conditions, and large-scale climate oscillations from 1981?2015 for seven lakes in nort... ver más
Revista: Water