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IMPROVING NUTRIENT TRANSPORT SIMULATION IN SWAT BY DEVELOPING A REACH-SCALE WATER QUALITY MODELFemeena Pandara Valappil (6703574) 02 August 2019 (has links)
<p>Ecohydrological models are extensively used to evaluate land
use, land management and climate change impacts on hydrology and in-stream
water quality conditions. The scale at which these models operate influences
the complexity of processes incorporated within the models. For instance, a
large scale hydrological model such as Soil and Water Assessment Tool (SWAT)
that runs on a daily scale may ignore the sub-daily scale in-stream processes.
The key processes affecting in-stream solute transport such as advection,
dispersion and transient storage (dead zone) exchange can have considerable
effect on the predicted stream solute concentrations, especially for localized
studies. To represent realistic field conditions, it is therefore required to
modify the in-stream water quality algorithms of SWAT by including these
additional processes. Existing reach-scale solute transport models like OTIS
(One-dimensional Transport with Inflow and Storage) considers these processes
but excludes the actual biochemical reactions occurring in the stream and
models nutrient uptake using an empirical first-order decay equation.
Alternatively, comprehensive stream water quality models like QUAL2E (The
Enhanced Stream Water Quality Model) incorporates actual biochemical reactions
but neglects the transient storage exchange component which is crucial is
predicting the peak and timing of solute concentrations. In this study, these
two popular models (OTIS and QUAL2E) are merged to integrate all essential
solute transport processes into a single in-stream water quality model known as
‘Enhanced OTIS model’. A generalized model with an improved graphical user
interface was developed on MATLAB platform that performed reasonably well for
both experimental data and previously published data (R<sup>2</sup>=0.76). To
incorporate this model into large-scale hydrological models, it was necessary
to find an alternative to estimate transient storage parameters, which are
otherwise derived through calibration using experimental tracer tests. Through
a meta-analysis approach, simple regression models were therefore developed for
dispersion coefficient (D), storage zone area (A<sub>s</sub>) and storage
exchange coefficient (α) by relating them to easily obtainable hydraulic
characteristics such as discharge, velocity, flow width and flow depth. For
experimental data from two study sites, breakthrough curves and storage
potential of conservative tracers were predicted with good accuracy (R<sup>2</sup>>0.5)
by using the new regression equations. These equations were hence recommended
as a tool for obtaining preliminary and approximate estimates of D, A<sub>s</sub>
and α when reach-specific calibration is unfeasible. </p>
<p> </p>
<p>The existing water quality module in SWAT was replaced with
the newly developed ‘Enhanced OTIS model’ along with the regression equations
for storage parameters. Water quality predictions using the modified SWAT model
(Mir-SWAT) for a study catchment in Germany showed that the improvements in process
representation yields better results for dissolved oxygen (DO), phosphate and
Chlorophyll-a. While the existing model simulated extreme low values of DO, Mir-SWAT
improved these values with a 0.11 increase in R<sup>2</sup> value between
modeled and measured values. No major improvement was observed for nitrate
loads but modeled phosphate peak loads were reduced to be much closer to
measured values with Mir-SWAT model. A qualitative analysis on Chl-<i>a</i> concentrations also indicated that
average and maximum monthly Chl-<i>a</i>
values were better predicted with Mir-SWAT when compared to SWAT model,
especially for winter months. The newly developed in-stream water quality model
is expected to act as a stand alone model or coupled with larger models to
improve the representation of solute transport processes and nutrient uptake in
these models. The improvements made to SWAT model will increase the model
confidence and widen its extent of applicability to short-term and localized
studies that require understanding of fine-scale solute transport dynamics. </p>
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Artificial Neural Networks (ANN) in the Assessment of Respiratory MechanicsPerchiazzi, Gaetano January 2004 (has links)
<p>The aim of this thesis was to test the capability of Artificial Neural Networks (ANN) to estimate respiratory mechanics during mechanical ventilation (MV). ANNs are universal function approximators and can extract information from complex signals. </p><p>We evaluated, in an animal model of acute lung injury, whether ANN can assess respiratory system resistance (R<sub>RS</sub>) and compliance (C<sub>RS</sub>) using the tracings of pressure at airways opening (P<sub>AW</sub>), inspiratory flow (V’) and tidal volume, during an end-inspiratory hold maneuver (EIHM). We concluded that ANN can estimate C<sub>RS</sub> and R<sub>RS</sub> during an EIHM. We also concluded that the use of tracings obtained by non-biological models in the learning process has the potential of substituting biological recordings.</p><p>We investigated whether ANN can extract C<sub>RS</sub> using tracings of P<sub>AW</sub> and V’, without any intervention of an inspiratory hold maneuver during continuous MV. We concluded that C<sub>RS</sub> can be estimated by ANN during volume control MV, without the need to stop inspiratory flow.</p><p>We tested whether ANN, fed by inspiratory P<sub>AW </sub>and V’, are able to measure static total positive end-expiratory pressure (PEEP<sub>tot,stat</sub>) during ongoing MV. In an animal model we generated dynamic pulmonary hyperinflation by shortening expiratory time. Different levels of external PEEP (PEEP<sub>APP</sub>) were applied. Results showed that ANN can estimate PEEP<sub>tot,stat</sub> reliably, without any influence from the level of PEEP<sub>APP</sub>.</p><p>We finally compared the robustness of ANN and multi-linear fitting (MLF) methods in extracting C<sub>RS</sub> when facing signals corrupted by perturbations. We observed that during the application of random noise, ANN and MLF maintain a stable performance, although in these conditions MLF may show better results. ANN have more stable performance and yield a more robust estimation of C<sub>RS</sub> than MLF in conditions of transient sensor disconnection.</p><p>We consider ANN to be an interesting technique for the assessment of respiratory mechanics.</p>
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Artificial Neural Networks (ANN) in the Assessment of Respiratory MechanicsPerchiazzi, Gaetano January 2004 (has links)
The aim of this thesis was to test the capability of Artificial Neural Networks (ANN) to estimate respiratory mechanics during mechanical ventilation (MV). ANNs are universal function approximators and can extract information from complex signals. We evaluated, in an animal model of acute lung injury, whether ANN can assess respiratory system resistance (RRS) and compliance (CRS) using the tracings of pressure at airways opening (PAW), inspiratory flow (V’) and tidal volume, during an end-inspiratory hold maneuver (EIHM). We concluded that ANN can estimate CRS and RRS during an EIHM. We also concluded that the use of tracings obtained by non-biological models in the learning process has the potential of substituting biological recordings. We investigated whether ANN can extract CRS using tracings of PAW and V’, without any intervention of an inspiratory hold maneuver during continuous MV. We concluded that CRS can be estimated by ANN during volume control MV, without the need to stop inspiratory flow. We tested whether ANN, fed by inspiratory PAW and V’, are able to measure static total positive end-expiratory pressure (PEEPtot,stat) during ongoing MV. In an animal model we generated dynamic pulmonary hyperinflation by shortening expiratory time. Different levels of external PEEP (PEEPAPP) were applied. Results showed that ANN can estimate PEEPtot,stat reliably, without any influence from the level of PEEPAPP. We finally compared the robustness of ANN and multi-linear fitting (MLF) methods in extracting CRS when facing signals corrupted by perturbations. We observed that during the application of random noise, ANN and MLF maintain a stable performance, although in these conditions MLF may show better results. ANN have more stable performance and yield a more robust estimation of CRS than MLF in conditions of transient sensor disconnection. We consider ANN to be an interesting technique for the assessment of respiratory mechanics.
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