Abstract:
Hydrologic  variables  might  vary  in  space,   as  well  as time  and  are  represented  by  either  continuous  or  discrete  series. 	Much   of the  statistical  methodology  is  concerned 
with  models  in  which  the  observations  are  assumed  to  vary independently. 	However,  a  great  deal  of  the  data  in water resources  planning  and  management  occur  in  the  form  of  time  series  where observations  are  dependent  and  the  nature  of this  dependence  is  an  important  characteristic  of  time  series. 
The  report  gives  a  short  review  on  hydrologic  time series  with  particular  emphasis  on  river  flow  time  series modelling.   The  analysis  of  deterministic   and  stochastic components  of  time  series  has  been  discussed  in  the beginning  and  further  extended  to  stochastic  models.   Short memory  models  like  autoregressive  models,  moving  average  models, autoregressive  moving  average  models,  autoregressive integrated  moving  average  models  have  been  discussed  in the  light  of  identification  of  the  model,  parameter  estimation and  diagnostic  checking.   Long  memory models  like   fractional Gaussian  noise  models ,  fast  fractional  Gaussian  noise  models and  broken  line  models  have  also  been  described.   Details of  multisite  short  memory  and  long memory models  have  been provided. Final  remarks  including  areas  in  which  further research  is  needed  and  extensive  list  of  references  is given  at  the  end  of  the  report.