Y = log10(X) returnsthe common logarithm of each element in array X.The 
function accepts both real and complex inputs. For real valuesof X in the 
interval (0, Inf), log10 returnsreal values in the interval (-Inf ,Inf).For 
complex and negative real values of X, the log10 functionreturns complex 
values.

If the output of the function running on the GPU can be complex, then you 
must explicitly specify its input arguments as complex. For more 
information, see Work with Complex Numbers on a GPU (Parallel Computing 
Toolbox).
log10 matlab

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The log10 function can calculate on all variables within a table or 
timetable without indexing to access those variables. All variables must 
have data types that support the calculation. For more information, see 
Direct Calculations on Tables and Timetables.

The error message tells you what the problem is, you've tried to apply the 
log10 function to a value of type uint8 and the function is not defined for 
that type of number. What you haven't realised is that imread, when an 
image file meets certain criteria (read the documentation for what those 
criteria are) will capture the pixel data into an array of uint8s, not real 
numbers.

If you want to take the logarithm of a uint8 you'll either have to define a 
logarithm function of your own which takes such inputs, or, more 
straightforward, cast the uint8 to a type which log10 is happy with. For 
example, you could write:

And by now you'll have realised why your diagnostic test didn't tell you 
anything useful, when you execute the command log10(190) Matlab, by 
default, decides that 190 is of type double and computes the logarithm 
without complaint. log10(uint8(190)) tells a different story.

Originally, computed PSD is in *power^2/hz*. Then I go to matlab command, 
and run *Data = log(Data.*10^12)*. Is it right formula? *All values I get 
are negative.* Is the outcome data divided by Hz as in the formula above (
*log(power^2/hz)*)?

Z-score with respect to what?
The Z-score normalization available in the process "Baseline normalization" 
estimates the mean and variance computed over a baseline time segment. Your 
PSD doesn't have any time dimension.

Hi Niko. That doesn't sound very meaningful to me. The mean power (and std) 
varies a lot across frequency. So you'd get a spectrum that would look the 
same, but scaled into this "Z-scores" that cannot be interpreted as usual, 
e.g. for a statistical threshold.
Cheers

That seems like a valid Z-score transformation to me, if that's what you're 
interested in: how individuals' power values compare with the population 
distribution. In practice though you don't have the population standard dev 
(only your sample's), so I believe it's actually a t-statistic.

Does someone know what the difference is between the log and log10 
transformation in JMP? I cannot find any information on it... I discovered 
that they do not give the same result and I wonder what the reason is.

Th ability to write custom functions within Matlab lends an extrodinary 
amount of power to the user. In this example, we will write a function that 
will compute the friction factor as a function of the Reynolds number and 
the relative roughness: epsilon / diameter.

To begin, all functions within matlab must begin by declaring that m-file 
is a function. This is accomplished by having the first line of the m-file 
having the word 'function' followed by the name of the variable which will 
be returned. This is consequently set equal to the name of the name of the 
file with the quantities that are passed to the function in parenthesis. 
For the purpose of this excersize, the name of the function will be 'moody' 
and the first line of the function is as follows:

The next step is to use a series of conditional tests to determine if the 
Reynolds number is in an appropriate range for the application of the moody 
chart. The first conditional statement tests to see if the Reynolds number 
is positive and if not displays a warning. The 'error' command will cause 
the script to quit without finishing if the condition proves to be true.

The 'return' command causes the script to terminate and since the value of 
'f' is assigned, this is the value returned by the function. The 
conditional statments are terminated by the use use of the 'emd' command.

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However, whether SARS-CoV-2 is eradicated by sewage treatment is virtually 
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whether a mixed matrixed membrane (MMM) is able to remove SARS-CoV-2 
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SARS-CoV-2 in sewage fractions. For the purposes of determining SARS-CoV-2 
prevalence rates in the treated effluent, 10 L of effluent specimens were 
collected in middle-risk and low-risk treatment MMMs. For PC-HMO, the log 
reduction value (LRV) for SARS-CoV-2 was 1.3-1 log10 for moderate risk and 
0.96-1 log10 for low risk, whereas for PC-Ag-NP, the LRV was 0.99-1.3 log10 
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0.96 log10, respectively.

En MATLAB, la fonction logarithme nprien ou naturel, que l'on note souvent 
ln en mathmatiques, s'appelle log . Tandis que le logarithme commun, en 
base 10, que l'on note souvent log s'appelle log10.
4a15465005

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