Difference between revisions of "Team:NYMU-Taipei/Model"

 
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<h1><i>Synechococcus PCC7942</i></h1>
 
<h1><i>Synechococcus PCC7942</i></h1>
 
<div class='model_wrapper' >
 
<div class='model_wrapper' >
<p>  The modeling from Figure 1 to Figure 5 belongs to the experiments of <i>Synechococcus PCC7942</i> pigments for better photosynthetic efficiencies. We need to check if another microalgae contains an exogenous pigment that can successfully reach new photosynthesis rate and further increase biomass proportion. We already have models about the influence of energy adsorption, but pigments will certainly affect other factors. Therefore, we construct several models that each represents an important factor in the growth and cell composition. Thus, we can determine the best culturing collocation by combining these models.
+
<p>  The modeling from Figure 1 to Figure 5 belongs to the experiments of <i>Synechococcus PCC7942</i> pigments for better photosynthetic efficiencies. We need to check if another microalgae contains an exogenous pigment that can successfully reach new photosynthesis rate and further increase the proportion of biomass. We already have models about the influence of energy adsorption, but pigments will certainly affect other factors. Therefore, we construct several models that each represents an important factor in the growth and cell composition. Thus, we can determine the best culturing collocation by combining these models.
 
</p>
 
</p>
 
</div>
 
</div>
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</a>
 
</a>
 
 
<p>  We want to use pigments to enhance the photosynthesis rate. Different pigments absorb different wavelengths of sunlight and bring about different irradiance, body temperature, and photosynthesis rate. These two models show the influence of irradiance and temperature on photosynthesis rate.
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<p>  We want to use pigments to enhance the photosynthesis rate. Different pigment absorbs different wavelength of sunlight and bring about different irradiance, body temperature, and photosynthesis rate. These two models show the influence of irradiance and temperature on photosynthesis rate.
 
</p>
 
</p>
 
 
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<h1><i>Chlorella vulgaris</i></h1>
 
<h1><i>Chlorella vulgaris</i></h1>
 
<div class='model_wrapper' >
 
<div class='model_wrapper' >
<p>  The modeling from Figure 6 to Figure 13 belongs to the experiments of <i>Chlorella vulgaris</i> for nitrogen starvation. To precisely calculate the time of starting co-culturing and ensure there are enough high-affinity E. coli in the bioreactor, we build several models that include the original and new system. They demonstrate the significant improvement of productivity after successfully isolated the microalgae from nitrogen. For instance, one of them provides a variety of information about population when two organisms in the pool start building some relationship.
+
<p>  The modeling from Figure 6 to Figure 13 belongs to the experiments of <i>Chlorella vulgaris</i> for nitrogen starvation. To precisely calculate the timing of starting co-culturing and to ensure there are enough high-affinity E. coli in the bioreactor, we built several models that include the original and new system. They demonstrated the significant improvement of productivity after successfully deprived the microalgae from nitrogen. For instance, one of them provides a variety of information about population when two organisms in the pool start building some relationship.
 
</p>
 
</p>
 
</div>
 
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</a>
 
</a>
 
 
<p>  By simulating common systems of oil accumulation and nitrogen source consumption, we can not only get the reference data before the improvement, but also make it as a basic equation after joining some parameters or organisms into the system.
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<p>  By simulating common systems of oil accumulation and nitrogen source consumption, we cannot only get the reference data before the improvement, but also make it a basic equation after joining some parameters or organisms into the system.
 
</p>
 
</p>
 
<h6 style='color:#bc0101; font-family:"Roboto Mono", monospace;'>
 
<h6 style='color:#bc0101; font-family:"Roboto Mono", monospace;'>
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</a>
 
</a>
 
 
<p>  According to our reference of experiment data, we find that <i>E.coli</i> can build a relationship, which is like symbiosis, with <i>Chlorella vulgaris</i>. Therefore, we build a model and use three kinds of values from different situation to simulate their change when they are co-cultured. According to this, we get the proper experimental proportion of them at each need.
+
<p>  According to our reference of experimental data, we find that <i>E.coli</i> can build a relationship, which is like symbiosis, with <i>Chlorella vulgaris</i>. Therefore, we build a model and use three kinds of values from different situations to simulate their change when they are co-cultured. According to this, we get the proper experimental proportion of them at each need.
 
</p>
 
</p>
 
 
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</a>
 
</a>
 
 
<p>  NrtA is an endocrine secretion protein and this characteristic is a bound to reach our goal because it do not has enough efficiency to make microalgae to produce a significant amount of biofuel. We have tried to turn NrtA into exocrine secretion protein but unfortunately, we didn’t make it in time. If we have successfully transform it into a exocrine secretion protein, and with the help of the connected constitutive promoter, we might have a better result than before theoretically. And this model provide the predictive changement and productivity of new method.
+
<p>  NrtA is an endocrine secretion protein and this characteristic is a bound to reach our goal because it does not have enough efficiency to make microalgae to produce a significant amount of biofuel. We have tried to turn NrtA into exocrine secretion protein but unfortunately, we didn’t make it in time. If we have successfully transform it into a exocrine secretion protein, and with the help of the connected constitutive promoter, we might have a better result than before theoretically. And this model provide the predictive quantity of change and productivity of new method.
 
</p>
 
</p>
 
 

Latest revision as of 19:22, 1 November 2017

MODELING

  This year, our modeling focuses on predicting the effect of our modified microbes on productivity. It is an extremely important part to our project because it helps us accurately check and predict information from our experiments that are tested in the wet lab. In our project, there are two essential types of microalgae that play very important roles, Synechococcus PCC7942 and Chlorella vulgaris. The following descriptions will show our success in modeling.

Synechococcus PCC7942

  The modeling from Figure 1 to Figure 5 belongs to the experiments of Synechococcus PCC7942 pigments for better photosynthetic efficiencies. We need to check if another microalgae contains an exogenous pigment that can successfully reach new photosynthesis rate and further increase the proportion of biomass. We already have models about the influence of energy adsorption, but pigments will certainly affect other factors. Therefore, we construct several models that each represents an important factor in the growth and cell composition. Thus, we can determine the best culturing collocation by combining these models.

Chlorella vulgaris

  The modeling from Figure 6 to Figure 13 belongs to the experiments of Chlorella vulgaris for nitrogen starvation. To precisely calculate the timing of starting co-culturing and to ensure there are enough high-affinity E. coli in the bioreactor, we built several models that include the original and new system. They demonstrated the significant improvement of productivity after successfully deprived the microalgae from nitrogen. For instance, one of them provides a variety of information about population when two organisms in the pool start building some relationship.