Browsing by Author "Qian, Song S"
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Item Open Access A multilevel model of field-scale nitrogen export from agricultural areas(2010-04-27T00:00:30Z) Jones, PhillipAgricultural lands contribute significant nitrogen loads to surface waters. Excessive nitrogen input leads to eutrophication, the process by which aquatic ecosystems become nutrient rich. Eutrophication is associated with a wide range of undesirable changes, including shifts in physical and chemical states, changes in species composition, and the loss of ecosystem services. In agricultural areas, excessive nutrient loading is addressed through the implementation of Best Management Practices (BMPs). However, field-scale nutrient export is controlled by a complex array of interacting factors that operate at different spatial scales. Multilevel regression is a statistical technique that allows for the exploration of group-level factors that may explain variation in the overall model coefficients. In this study, multilevel regression models for dissolved and particulate nitrogen loading are fit to USDA agricultural data. The results indicate that the impact of management practice depends on the form of nitrogen as well as predictors such as soil texture that operate on large spatial scales. Specific management recommendations include soil nitrogen testing and the use of conservation measures that address water runoff. Management applications of the fitted models include load estimation as part of watershed leveling modeling efforts as well as the evaluation of proposed policy guidelines for nutrient control.Item Open Access Analyze China's CO2 Emission Pattern and Forecast Its Future Emission(2009-08-28T13:47:02Z) Sun, XiaojingGreenhouse gas emission from China is projected to exceed that from the U.S. according to the widely cited paper Forecasting the Path of China’s CO2 Emissions Using Province Level Information, published by Professor Auffhammer and Carson from UC Berkeley. This conclusion has important implications on international relations and strategies in combating global climate change. The current work examines the statistical basis of this projection. The results suggest that the conclusion is potentially flawed for the following two reasons. First, the model proposed by Auffhammer and Carson assumes a common relationship between CO2 emission and GDP growth for all 30 provinces over the study period. Second, the preferred models in Auffhammer and Carson’s work failed to properly address time dependence in data. The two structural errors in the models will potentially lead to biased predictions because the models’ incorrectly handled data and model error. The current study developed models that corrected the two model error structure issues in UC Berkeley’s paper. These models result in different CO2 emission trajectory from the ones predicted by Auffhammer and Carson.Item Open Access Bayesian Statistical Analysis in Coastal Eutrophication Models: Challenges and Solutions(2014) Nojavan Asghari, FarnazEstuaries interfacing with the land, atmosphere and open oceans can be influenced in a variety of ways by anthropogenic activities. Centuries of overexploitation, habitat transformation, and pollution have degraded estuarine ecological health. Key concerns of public and environmental managers of estuaries include water quality, particularly the enrichment of nutrients, increased chlorophyll a concentrations, increased hypoxia/anoxia, and increased Harmful Algal Blooms (HABs). One reason for the increased nitrogen loading over the past two decades is the proliferation of concentrated animal feeding operations (CAFOs) in coastal areas. This dissertation documents a study of estuarine eutrophication modeling, including modeling of major source of nitrogen in the watershed, the use of the Bayesian Networks (BNs) for modeling eutrophication dynamics in an estuary, a documentation of potential problems of using BNs, and a continuous BN model for addressing these problems.
Environmental models have emerged as great tools to transform data into useful information for managers and policy makers. Environmental models contain uncertainty due to natural ecosystems variability, current knowledge of environmental processes, modeling structure, computational restrictions, and problems with data/observations due to measurement error or missingness. Many methodologies capable of quantifying uncertainty have been developed in the scientic literature. Examples of such methods are BNs, which utilize conditional probability tables to describe the relationships among variables. This doctoral dissertation demonstrates how BNs, as probabilistic models, can be used to model eutrophication in estuarine ecosystems and to explore the effects of plausible future climatic and nutrient pollution management scenarios on water quality indicators. The results show interaction among various predictors and their impact on ecosystem health. The synergistic eftects between nutrient concentrations and climate variability caution future management actions.
BNs have several distinct strengths such as the ability to update knowledge based on Bayes' theorem, modularity, accommodation of various knowledge sources and data types, suitability to both data-rich and data-poor systems, and incorporation of uncertainty. Further, BNs' graphical representation facilitates communicating models and results with environmental managers and decision-makers. However, BNs have certain drawbacks as well. For example, they can only handle continuous variables under severe restrictions (1- Each continuous variable be assigned a (linear) conditional Normal distribution; 2- No discrete variable have continuous parents). The solution, thus far, to address this constraint has been discretizing variables. I designed an experiment to evaluate and compare the impact of common discretization methods on BNs. The results indicate that the choice of discretization method severely impacts the model results; however, I was unable to provide any criteria to select an optimal discretization method.
Finally, I propose a continuous variable Bayesian Network methodology and demonstrate its application for water quality modeling in estuarine ecosystems. The proposed method retains advantageous characteristics of BNs, while it avoids the drawbacks of discretization by specifying the relationships among the nodes using statistical and conditional probability models. The Bayesian nature of the proposed model enables prompt investigation of observed patterns, as new conditions unfold. The network structure presents the underlying ecological ecosystem processes and provides a basis for science communication. I demonstrate model development and temporal updating using the New River Estuary, NC data set and spatial updating using the Neuse River Estuary, NC data set.
Item Open Access Examining conservation attitudes, perspectives, and challenges in India(Biological Conservation, 2008-09-01) Karanth, Krithi K; Kramer, Randall A; Qian, Song S; Christensen, Norman LBiodiversity conservation issues are often contentious and complex. Polarized debates on the effectiveness of protected areas and role of people inside them, charismatic species as conservation foci, and on specific policy initiatives are common among Indian and global conservationists. We surveyed Indian conservationists about the conservation effectiveness of protected areas and charismatic species, as well as status of conservation and research efforts. We expected differences among people based on professional affiliation, and educational background. We examined participants' opinions on conservation policies like Project Tiger and Elephant, the Forest Rights Act, and the Tiger Task Force Report. Participants ranked Indian research efforts as average, and identified a bias towards terrestrial species and ecosystems. Ninety-percent of participants considered reserves to be effective, many (61%) participants felt that the situation of people living inside reserves is unsustainable, and many (76%) felt the use of force to protect reserves from illegal human activities is acceptable. Classification and regression tree models for these questions suggested that non-academics were more likely than academics to agree with these positions. On the success of Project Tiger and Elephant, older participants were more likely to think these initiatives were a success. Many (63%) participants felt the Forest Rights Act needed revision, particularly if they had doctoral degrees. Sixty-two percent of participants did not think Tiger Task Force was effective. Overall, participants' professional affiliation, age, and academic degree were important predictors of participants attitudes towards conservation initiatives. © 2008 Elsevier Ltd. All rights reserved.Item Open Access Potential Impacts of Climate Change and Management Strategies on U.S. Air Quality(2008-04-24T16:00:21Z) Marin, KristenClimate change will bring about many changes to the composition of the atmosphere. In addition to the increasing threats of extreme weather events and rising sea levels, climate change may also have a negative effect on air quality. Secondary formations of ozone and particulate matter are especially sensitive to changes in meteorological parameters such as temperatures and precipitation. In addition to changes due to climate change, air pollution concentrations in the future are influenced by management strategies that control emissions. The Clean Air Interstate Rule (CAIR) and the National Ambient Air Quality Standards (NAAQS) are both examples of management strategies that will change pollution concentrations in the future. The purpose of this Master’s Project is to take model results of current and future air pollution concentrations, under the CAIR and the NAAQS management scenarios, and summarize them in a way that can be utilized by policy makers to determine the best course of action for the future. Results are given for the Northeast United States summer season as an illustration of the causal inference method. Ozone concentrations will be lower in the future yet CAIR will not be any more effective at reducing ozone concentrations beyond the NAAQS’s. In contrast, the CAIR management strategy is more effective at reducing PM2.5 concentrations than the NAAQS. The probability of exceeding the health standards decreases for PM2.5¬ and ozone in the future. The results of this analysis indicate that CAIR is an effective tool to reduce PM2.5 concentrations yet no more effective than the NAAQS management strategy for ozone. This analysis paves the way for future work on how climate change will not only change temperatures but could also change how pollution is formed in the atmosphere.Item Open Access Statistical Analysis of the U.S. CO2 Emissions Using State-Level Data(2010-12-09) Kuo, Peng-YuPast statistical modeling of carbon dioxide (CO2) emissions has primarily followed the reduced-form specification in the Environmental Kuznets Curve literature. This traditional approach relies on the assumption of a homogenous slope relationship between CO2 emissions and economic growth across different geographical/political regions. This study uses a panel data comprised of the fifty U.S. states and the District of Columbia and challenges the homogenous slope assumption. By an innovative multilevel modeling approach, it is possible to model heterogeneous slopes for each state. Moreover, the multilevel models can partially explain the variation in slopes by incorporating state economic compositions as state-level explanatory variables. The modeling results of this paper show that six out of ten of the major economic sectors are significant state-level explanatory variables of CO2-GDP slope variations with their explanatory capability ranked from high to low as: services, transportation, finance, agriculture, energy- intensive manufacture, and mining. Two of these six sectors, finance and services, have negative effects on the CO2-GDP slopes, while the other four sectors have positive effects. This study demonstrates the feasibility of studying CO2 emission trends using multilevel models; however, this study also has some weaknesses in that it fails to account for certain state-level covariates and temporal changes of economic compositions. Future research should aim to overcome these shortcomings.