PDF version (NAG web site
, 64-bit version, 64-bit version)
NAG Toolbox: nag_specfun_airy_ai_deriv (s17aj)
Purpose
nag_specfun_airy_ai_deriv (s17aj) returns a value of the derivative of the Airy function , via the function name.
Syntax
Description
nag_specfun_airy_ai_deriv (s17aj) evaluates an approximation to the derivative of the Airy function . It is based on a number of Chebyshev expansions.
For
,
where
,
and
and
are expansions in variable
.
For
,
where
and
are expansions in
.
For
,
where
is an expansion in
.
For
,
where
is an expansion in
.
For
,
where
and
is an expansion in
.
For
the square of the
machine precision, the result is set directly to
. This both saves time and avoids possible intermediate underflows.
For large negative arguments, it becomes impossible to calculate a result for the oscillating function with any accuracy and so the function must fail. This occurs for
, where
is the
machine precision.
For large positive arguments, where decays in an essentially exponential manner, there is a danger of underflow so the function must fail.
References
Abramowitz M and Stegun I A (1972) Handbook of Mathematical Functions (3rd Edition) Dover Publications
Parameters
Compulsory Input Parameters
- 1:
– double scalar
-
The argument of the function.
Optional Input Parameters
None.
Output Parameters
- 1:
– double scalar
The result of the function.
- 2:
– int64int32nag_int scalar
unless the function detects an error (see
Error Indicators and Warnings).
Error Indicators and Warnings
Errors or warnings detected by the function:
-
-
x is too large and positive. On soft failure, the function returns zero.
-
-
x is too large and negative. On soft failure, the function returns zero.
-
An unexpected error has been triggered by this routine. Please
contact
NAG.
-
Your licence key may have expired or may not have been installed correctly.
-
Dynamic memory allocation failed.
Accuracy
For negative arguments the function is oscillatory and hence absolute error is the appropriate measure. In the positive region the function is essentially exponential in character and here relative error is needed. The absolute error,
, and the relative error,
, are related in principle to the relative error in the argument,
, by
In practice, approximate equality is the best that can be expected. When
,
or
is of the order of the
machine precision, the errors in the result will be somewhat larger.
For small
, positive or negative, errors are strongly attenuated by the function and hence will be roughly bounded by the
machine precision.
For moderate to large negative
, the error, like the function, is oscillatory; however the amplitude of the error grows like
Therefore it becomes impossible to calculate the function with any accuracy if
.
For large positive
, the relative error amplification is considerable:
However, very large arguments are not possible due to the danger of underflow. Thus in practice error amplification is limited.
Further Comments
None.
Example
This example reads values of the argument from a file, evaluates the function at each value of and prints the results.
Open in the MATLAB editor:
s17aj_example
function s17aj_example
fprintf('s17aj example results\n\n');
x = [-10 -1 0 1 5 10 20];
n = size(x,2);
result = x;
for j=1:n
[result(j), ifail] = s17aj(x(j));
end
disp(' x Ai''(x)');
fprintf('%12.3e%12.3e\n',[x; result]);
s17aj_plot;
function s17aj_plot
x = [-15:0.1:5];
for j = 1:numel(x)
[Aid(j), ifail] = s17aj(x(j));
end
fig1 = figure;
plot(x,Aid,'-r');
xlabel('x');
ylabel('Ai''(x)');
title('Derivative of Airy Function Ai(x)');
axis([-15 5 -1.5 1.5]);
s17aj example results
x Ai'(x)
-1.000e+01 9.963e-01
-1.000e+00 -1.016e-02
0.000e+00 -2.588e-01
1.000e+00 -1.591e-01
5.000e+00 -2.474e-04
1.000e+01 -3.521e-10
2.000e+01 -7.586e-27
PDF version (NAG web site
, 64-bit version, 64-bit version)
© The Numerical Algorithms Group Ltd, Oxford, UK. 2009–2015