My grain sizes are defined as D=[1.19,1.00,0.84,0.71,0.59,0.50,0.42]. The problem is described below in steps.

- Grain sizes should follow lognormal distribution.
- The mean of the grain sizes is fixed as 0.84 and the standard deviation should be as low as possible but not zero.
- 90% of the grains (by weight %) fall in the size range of 1.19 to 0.59, and the rest 10% fall in size range of 0.50 to 0.42.
- Now I want to find the probabilities (weight percentage) of the grains falling in each grain size.
- It is allowable to split this grain size distribution into further small sizes but it must always be in the range of 1.19 and 0.42, i.e. 'D' can be continuous but 0.42 < D < 1.19.

I need it fast. I tried on my own but I am not able to get the correct result. I am getting negative probabilities (weight percentages). Thanks to anyone who helps.

I didn't incorporate the point 3 as I came to know about that condition later. Here are simple steps I tried:

%%

```
D=[1.19,1.00,0.84,0.71,0.59,0.50,0.42];
s=0.30; % std dev of the lognormal distribution
m=0.84; % mean of the lognormal distribution
mu=log(m^2/sqrt(s^2+m^2)); % mean of the associated normal dist.
sigma=sqrt(log((s^2/m^2)+1)); % std dev of the associated normal dist.
[r,c]=size(D);
for i=1:c
D_normal(i)=mu+(sigma.*randn(1));
w(i)=(D_normal(i)-mu)/sigma; % the probability or the wt. percentage of the grain sizes
end
grain_size=exp(D_normal);
```

%%

I would like to rephrase my problem in following simple way:

I want to develop a lognormal distribution with range [0.42,1.19], whose few elements are given as `D=[1.19,1.00,0.84,0.71,0.59,0.50,0.42]`

. The mean should be `0.84`

and standard deviation as small as possible. Also given is that the 90% of cdf (=90% of the grains) lies between `0.59 and 1.19`

.

Once I know all the elements of this lognormal distribution which incorporates the given conditions I can find its pdf, which is what I require.