DIGITALNA ARHIVA ŠUMARSKOG LISTA
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D. Klobučar, R. Pernar: UMJETNE NEURONSKE MREŽE U PROCJENI SASTOJINSKIH OBRASTA...Šumarski list br. 3–4, CXXXIII (2009), 145-155
5. ZAKLJUČCI – Conclusions
Istraživanje procjene i raspodjele sastojinskih obras
ta postupkom umjetne neuronske mreže provedeno je
na primjeru gospodarske jedinice “Jamaričko brdo”,
šu marije Lipovljani. Na osnovi provedenih istraživanja
i dobivenih rezultata izvedeni su sljedeći zaključci:


U šumarstvu RH, svrsishodno primjenjivanje potvrđenih
vrijednosti daljinskih istraživanja u praćenju
stanja i inventarizaciji šumskih resursa zahtijeva
raz vijen sustav periodičnog snimanja ili pridobivanja
scena šumskih površina


Višeslojni perceptron ima dobra generalizacijska
svojstva u procjeni sastojinskih obrasta metodama
daljinskih istraživanja s crno-bijelih cikličkih aerofotosnimaka



Samoorganizirajuća neuronska mreža može se primi
jeniti u kontroli raspodjele sastojinskih obrasta s
cikličkih aerofotosnimaka


Ovim istraživanjem naznačena je jedna od velikog
broja mogućnosti primjene umjetnih neurons kih
mreža u šumarskoj znanstvenoj i operativnoj dje latnosti.
Stoga, istraživanja i primjenu treba nastaviti i
na drugim područjima (iskorištavanje, zaštita, ekologija
i dr.) kako bi se racionalizirali radovi u šumarstvu.

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