Another possible approach:

    v <- c(3, 5, 2, 5, 3, 4, 5, 3, 1, 4)
    reset <- 10
    s <- cumsum(v)
    idx <- as.integer(s / reset)
    logic <- idx >= 1 & !duplicated(idx)
    
    > logic
    [1] FALSE FALSE  TRUE FALSE FALSE  TRUE FALSE  TRUE FALSE FALSE

    # corresponding one-liner
    logic <- with(list(idx=as.integer(cumsum(v) / reset)),idx >= 1 & !duplicated(idx))


----------


Just for fun I've also created a Rcpp version of the function :

    library(Rcpp)
    library(inline)
            
    cumsumResetRcpp <- cxxfunction(signature(values='numeric',reset='integer'),
    '
      Rcpp::IntegerVector r(reset);
      int resetVal = r[0];
      Rcpp::NumericVector v(values);
      int n = v.size();
      Rcpp::NumericVector result(n);
      double cumsum = 0;
      for(int i = 0; i < n; i++){
        int prevCumSumFloor = (int)(cumsum / resetVal);
        cumsum += v[i];
        int currCumSumFloor = (int)(cumsum / resetVal);
        if(currCumSumFloor > prevCumSumFloor)
          result[i] = cumsum;
      }
      return( result ) ;
    ', plugin="Rcpp", verbose=FALSE,includes='')


Comparison with my previous version :

    library(microbenchmark)
    
    baseRVersion <- function(v,reset){
       a <- cumsum(v)
       a[!with(list(idx=as.integer(a / reset)),idx >= 1 & !duplicated(idx))] <- 0
       a
    }
    
    RcppVersion <- function(v,reset){
      cumsumResetRcpp(v,reset)
    }
    
    set.seed(1234)
    v <- sample(5,1e6,replace=TRUE)
    
    microbenchmark(baseRVersion(v,10), RcppVersion(v,10),
                   check=function(x){Reduce(identical,x)},times=20)


    # Result :
       Unit: milliseconds
                    expr      min       lq     mean    median       uq      max neval
     baseRVersion(v, 10) 69.78914 74.34717 91.67828 102.95764 103.6911 105.4055    20
      RcppVersion(v, 10) 17.28785 17.58432 18.89449  19.25759  19.8595  20.5627    20