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Residuals plotting

Pigure 8.8a and b, respectively, show fluorescence autocorrelation curves of R6G in ethylene glycol and R123 in water at 294.4 K. The solid lines in these traces are curves analyzed by the nonlinear least square method with Eq. (8.1). Residuals plotted on top of the traces clearly indicate that the experimental results were well reproduced by the... [Pg.141]

With the Nelder-Mead search, 58 full integrations and 0.6 s computer time on a VAX 6000 computer were needed to get the following result with initial and final values, standard deviation, residual plot and statistical information. [Pg.121]

TIME OBSERVED PREDICTED % ERROR RESIDUAL PLOT ... [Pg.121]

Figure 12 Residuals plot for the nonlinear model 5.2.1 Hamaker equation... Figure 12 Residuals plot for the nonlinear model 5.2.1 Hamaker equation...
Figure 5. L-Alanine. Fit to noisy data. Calculation A. Distribution of residual structure factor amplitudes at the end of the MaxEnt calculation on 2532 noisy data up to 0.463A. Residuals plotted ... [Pg.30]

Homoscedasticity. Unequal variances are recognizable from residual plots as in Fig. 6.8c where frequently ey is a function of x in the given trumpet-like form. In such a case, the test of homoscedasticity can be carried out in a simple way by means of the Hartley test (Fmax test), Fmax = smax/5min> see Sect. 4.3.4 (1). [Pg.169]

The residual plot of the difference between the best computed curve and the experimental data is shown in Figure 8. The largest variance is observed in the vicinity of the maximum isocyanate absorbance and probably arises because of the large changes in concentration which arise during the early stages of cure. [Pg.246]

The weighted residuals plots in Fig. 3.4 are the results of the analyses, where the shape of the reference spectra are matched to those of acceptor and donor spectra by least-squares refinement. Poor shape-analysis leads to high weighted residuals, which can reveal impurities, decomposition, or other artifacts. In the present cases, no difficulties were encountered. [Pg.63]

Fig. 3.4. Microtiter plate UV spectra taken in in acceptor wells. The weighted residuals plots triplicate of propranolol reference, donor, and indicate that the shapes of spectra in donor acceptor solutions, at iso-pH 7.4 in 20% wt/vol and acceptor wells are in agreement with those soy lecithin in dodecane. (a) After 15 h per- in the reference wells, confirming that neither meation time, surfactant-free (b) 3 h, 35 mM decomposition nor impurities were detectable. Fig. 3.4. Microtiter plate UV spectra taken in in acceptor wells. The weighted residuals plots triplicate of propranolol reference, donor, and indicate that the shapes of spectra in donor acceptor solutions, at iso-pH 7.4 in 20% wt/vol and acceptor wells are in agreement with those soy lecithin in dodecane. (a) After 15 h per- in the reference wells, confirming that neither meation time, surfactant-free (b) 3 h, 35 mM decomposition nor impurities were detectable.
For the basic evaluation of a linear calibration line, several parameters can be used, such as the relative process standard deviation value (Vxc), the Mandel-test, the Xp value [28], the plot of response factor against concentration, the residual plot, or the analysis of variance (ANOVA). The lowest concentration that has been used for the calibration curve should not be less than the value of Xp (see Fig. 4). Vxo (in units of %) and Xp values of the linear regression line Y = a + bX can be calculated using the following equations [28] ... [Pg.249]

Linearity should always be assessed initially by visual inspection of the plotted data and then by statistical evaluation. The linearity of the instrument response needs to be established because without this information it is difficult to attribute causes of non-linearity. The supporting statistical measures include correlation coefficient (r, r2, etc), residual plot, residual standard deviation and significance... [Pg.89]

Although we cannot clearly determine the reaction order from Figure 3.9, we can gain some insight from a residual plot, which depicts the difference between the predicted and experimental values of cA using the rate constants calculated from the regression analysis. Figure 3.10 shows a random distribution of residuals for a second-order reaction, but a nonrandom distribution of residuals for a first-order reaction (consistent overprediction of concentration for the first five datapoints). Consequently, based upon this analysis, it is apparent that the reaction is second-order rather than first-order, and the reaction rate constant is 0.050. Furthermore, the sum of squared residuals is much smaller for second-order kinetics than for first-order kinetics (1.28 X 10-4 versus 5.39 xl0 4). [Pg.59]

Probability plot Q-Q plot P-P Plot Hanging histogram Rootagram Poissonness plot Average versus standard deviation Component-plus-residual plot Partial-residual plot Residual plots Control chart Cusum chart Half-normal plot Ridge trace Youden plot... [Pg.944]

Of particular value in kinetic studies are residual plots using the linearized form of the Hougen-Watson equation. For the model of Eq. (18), for example, we obtain... [Pg.140]

The plot of the residuals of this adsorption constant, using the data of Fig. 17, is shown in Fig. 18. A substantial trending effect is evident (it is also evident from Fig. 17). This is of interest in itself, but it is especially desirable to utilize the information of Fig. 18 to learn how the model must be modified to remove the observed defect. The other residual plots of the section can also assist this objective. This topic, called model-building, is treated in Section V. [Pg.141]

Figure 30 portrays the grid of values of the independent variables over which values of D were calculated to choose experimental points after the initial nine. The additional five points chosen are also shown in Fig. 30. Note that points at high hydrogen and low propylene partial pressures are required. Figure 31 shows the posterior probabilities associated with each model. The acceptability of model 2 declines rapidly as data are taken according to the model-discrimination design. If, in addition, model 2 cannot pass standard lack-of-fit tests, residual plots, and other tests of model adequacy, then it should be rejected. Similarly, model 1 should be shown to remain adequate after these tests. Many more data points than these 14 have shown less conclusive results, when this procedure is not used for this experimental system. Figure 30 portrays the grid of values of the independent variables over which values of D were calculated to choose experimental points after the initial nine. The additional five points chosen are also shown in Fig. 30. Note that points at high hydrogen and low propylene partial pressures are required. Figure 31 shows the posterior probabilities associated with each model. The acceptability of model 2 declines rapidly as data are taken according to the model-discrimination design. If, in addition, model 2 cannot pass standard lack-of-fit tests, residual plots, and other tests of model adequacy, then it should be rejected. Similarly, model 1 should be shown to remain adequate after these tests. Many more data points than these 14 have shown less conclusive results, when this procedure is not used for this experimental system.
FIGURE 4.8 Examples of residual plots from linear regression. In the upper left plot, the residuals are randomly scattered around 0 (eventually normally distributed) and fulfill a requirement of OLS. The upper right plot shows heteroscedasticity because the residuals increase with y (and thus they also depend on x). The lower plot indicates a nonlinear relationship between x and y. [Pg.135]

Systematic deviations from the assumed model yield systematic patterns in the residuals and can, therefore, be detected by checking independence of the residuals. Residuals plot, particularly the residuals e, versus expected values y plot, is also well suited to detect non-linearities since the plot will show curved patterns instead of randomness. ... [Pg.237]

Further analysis of linearity data typically involves inspection of residuals for fit in the linear regression form and to verify that the distribution of data points around the line is random. Random distribution of residuals is ideal however, non-random patterns may exist. Depending on the distribution of the pattern seen in a plot of residuals, the results may uncover non-ideal conditions within the separation that may then help define the range of the method or indicate areas in which further development is required. An example of residual plot is shown in Figure 36. There was no apparent trend across injection linearity range. [Pg.386]

Duplicate injections shown. (A) Fitting the data by nonlinear regression analysis yields a of 5.6 1.0 pM. (B) Data from A, plotted as a sigmoidal curve to better show the fit at low titrant concentrations. (C) Residuals plotted as absolute and (D) as percent of signal. [Pg.133]

Measurement Residual Plot (Model, Sample, and Variable Diagnostic) The residue are the portion of the original data that is not described by a given number of PCs. Tlie number of elements in the residuals is the same as the number of measurement variables in the original matrix. To understand the residue, consider appl> ing PCA to a data set. Wlien the first PC is estimated, it is jKissible to determine the variation that is described by this first dimension or factor. The contribution of this PC can be subtracted from the original data set, resulting in a residual for each sample. This process can be... [Pg.50]

The residual plots can also be used to identify unusual samples. When one or more samples have a residual vector that is significantly different in magnitude or shape from the majority, they should be examined more closely. [Pg.51]

Measunment Residual Plot (Model, Sample, and Variable Diagnostic) Figure 4.3 c shows the residuals after using 1, 3, and 4 principal components, respctively. The residuals have been convened back from the autoscaled ui to the original measurement imits to facilitate comparisons. In this exampfe these plots do not definitively indicate the inherent dimensional-it> of the dan set. [Pg.57]

Measurement Residual Plot (Model, Sample, and Variable Diagnostic) The residuals plots (not shown) after two principal components showed structure, but after three principal components no significant structure remained. [Pg.77]

Measurment Residual Plot There are residual plots for each unknown sample for every SIMCA model. Tlie residual spectra for samples that belong to a class are expected to resemble in magnitude and shape normally distributed noise as fotsrd in the training set Depending on the structure of the residuals, it may be possible to identify failures in the instrument (e.g., excessive noise) or chemical differences between tlie calibration and unknown samples (e.g., peaks in the residuals). The residual plot may help identify why a sample is not classified iiso any given class. [Pg.85]

Measmsment Residual Plot The PCA residuals for the four unknowns tis-ing the TB. model are shown in Figure 4.90 with the range of the calibration residuals own as solid horizontal lines. Unknowns 1, 2, and 4 have large residuals, which is reflected in the values. Unknown 3 has a small residual... [Pg.93]

Concentration Residuals vs. Predicted Concentration Plot (Model and Sample Diagnostic) The plot of concentration residuals (c — c) versus predicted concentration gives similar infonnation to tlie predicted vs. known plots. Ideally this plot has a scatter of points about a line with slope and intercept equal to zero. Figure 5-14 shows the concentration residual versus predicted plots that correspond to the scenarios presented in Figure 5.12. The residual plot enhances features that can go unnoticed in the actual versus predicted plots. [Pg.104]

CalibraJwn Measurement Residual Plot (Model Diagnostic) After the pure specta are estimated (S), they are used with the original C matrix to generate esti es of the mixture spectra (R CS). These are then used to calculate a caUbration residual matrix which contains the portion of the mixture spectra that are not fit by the estimated pures (Equation 5.18). [Pg.116]


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See also in sourсe #XX -- [ Pg.154 ]

See also in sourсe #XX -- [ Pg.476 , Pg.477 ]




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Diagnostic tests of the fitted model. Residual plots

Normal probability plot of residuals

Plot, of residuals

Regression residual plots

Relative residual plots

Residual plots

Residual plots

Residuals plot and

Residue curve maps plotting

Statistical methods residual plot

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