Multivariate aspects of model uncertainty analysis: tools for sensitivity analysis and calibration

1997 ◽  
Vol 101 (1) ◽  
pp. 1-13 ◽  
Author(s):  
Olivier Klepper
2017 ◽  
Vol 60 (3) ◽  
pp. 803-812
Author(s):  
Anna C. Linhoss ◽  
Mary Love Tagert ◽  
Hazel Buka ◽  
Gretchen Sassenrath

Abstract. This work describes the global sensitivity and uncertainty analysis of the Mississippi Irrigation Scheduling Tool (MIST) using the Sobol’ method. An often overlooked but driving factor in any sensitivity and uncertainty analysis is the selection of the prior probability distribution functions (PDFs) that are used to describe parameter and input uncertainty. These prior PDFs have a direct impact on the total model uncertainty as well as the ranking of importance of model inputs and parameters. Furthermore, an uncertainty and sensitivity analysis generally focuses on a single objective function for analysis, but model outputs are often analyzed and summarized using a variety of objective functions. Therefore, it is important to include this variety of objective functions in any sensitivity and uncertainty analysis. In this article, we show how the choice of prior PDFs and objective functions impacts the ranking of important parameters and inputs in the MIST model. For example, under the “first day to irrigate” objective function, precipitation was the most important input when using informed prior PDFs, but precipitation ranked as the tenth most important input when using uninformed prior PDFs. Similarly, when using the uninformed prior PDFs, the curve number was the second most important input for the water balance objective function but only the eighth most important when assessing the “first day to irrigate” objective function. Furthermore, in the MIST model, increasing model complexity through the addition of algorithms, inputs, and parameters increases model uncertainty. Finally, in this particular application using the data described, the crop coefficient and precipitation were the most important parameters or inputs, while the initial abstraction and minimum temperature were the least important parameters or inputs. These results provide theoretical insights into sensitivity and uncertainty analysis studies as well as context-specific implications for strategic enhancement of the MIST model. Keywords: Crop water use, Evapotranspiration, Irrigation scheduling, Objective function, Probability distribution function, Sensitivity analysis, Uncertainty analysis.


2021 ◽  
Vol 2021 (1) ◽  
pp. 45-59
Author(s):  
Nabil Miftah Irfandha ◽  
Jeffry Raja Hamonangan Sitorus

Pembangunan di wilayah perkotaan membutuhkan manajemen kota untuk menyelesaikan  permasalahan yang terjadi akibat dari tingginya pertumbuhan penduduk. Kompleksitas permasalahan pada wilayah perkotaan sangat bervariasi, diantaranya penurunan kualitas pelayanan publik, berkurangnya ketersediaan lahan permukiman, kemacetan di jalan raya, konsumsi energi yang berlebihan, penumpukan sampah, peningkatan angka kriminalitas, dan masalah-masalah sosial lainnya. Pembentukan Indeks Pembangunan Smart City (IPSC) dipandang mampu memberi solusi yang efektif dan efisien dalam mengurangi permasalahan kota yang ada. Tujuan penelitian ini adalah mengetahui gambaran umum dan mendapatkan faktor- faktor pembentuk IPSC, mendapatkan hasil pengukuran IPSC, mengkaji uncertainty analysis dan sensitivity analysis dari IPSC dan melihat hubungan antara IPSC dengan IPM, serta mendapatkan klasifikasi berdasarkan 5 kategori di Indonesia. Berdasarkan hasil analisis faktor, terdapat 6 faktor yang terbentuk dimana wilayah IPSC tertinggi dengan jumlah penduduk kurang dari 200.000 jiwa terdapat di Kota Madiun, wilayah IPSC tertinggi dengan jumlah penduduk antara 200.000 hingga 1.000.000 jiwa terdapat di Kota Yogyakarta dan wilayah IPSC tertinggi dengan jumlah penduduk di atas 1.000.000 jiwa terdapat di Kota Tangerang. Hasil uncertainty analysis dan sensitivity analysis menunjukkan bahwa IPSC yang terbentuk sudah cukup robust dan reliable. Secara umum, IPSC memiliki hubungan yang positif terhadap IPM. Pembentukan indeks ini diharapkan mampu mempermudah pemerintah daerah dan pemerintah pusat dalam mengkaji kebijakan mengenai pengalokasian dana agar pembangunan smart city yang diharapkan sesuai dengan kondisi yang ada.


2019 ◽  
Author(s):  
Laura Painton Swiler ◽  
Jon C. Helton ◽  
Eduardo Basurto ◽  
Dusty Marie Brooks ◽  
Paul Mariner ◽  
...  

Author(s):  
Susan Griffin

This chapter covers methods for describing how lack of knowledge impacts on the conduct and findings of distributional cost-effectiveness analysis (DCEA). It also sets out methods for describing how different value judgments can alter the findings. It explains why and how to distinguish uncertainty about facts from heterogeneity in values, and the role of each in informing decisions. It shows how the standard tools of uncertainty analysis in economic evaluation—including deterministic and probabilistic sensitivity analysis, and value of information analysis—can be applied to DCEA to provide information about uncertainty in the estimated health distributions and summary measures of equity impact. The chapter also shows how to use deterministic sensitivity analyses to investigate the implications of alternative value judgments and inequality metrics for DCEA findings and recommendations.


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