The Holt-Winters additive method model is defined to be
\begin{align*} \hat{y}_{t+h|t} &= \ell_{t} + hb_{t} + s_{t+h-m(k+1)} \\ \ell_{t} &= \alpha(y_{t} - s_{t-m}) + (1 - \alpha)(\ell_{t-1} + b_{t-1})\\ b_{t} &= \beta^*(\ell_{t} - \ell_{t-1}) + (1 - \beta^*)b_{t-1}\\ s_{t} &= \gamma (y_{t}-\ell_{t-1}-b_{t-1}) + (1-\gamma)s_{t-m}, \end{align*}
but the text I am reading doesn't mention on the relevant page what precisely $h$ represents. I see that it scales $b_t$ and shifts $s_{t+h+m(k+1)}$, but it isn't obvious to me what the motivation or meaning of this value is. The passage mentions that $k$ is the integer part of some ratio $\frac{h-1}{m}$, but this did not sufficiently clarify what the quantity $h$ is. What is this $h$ representing?
Reference
Hyndman, R.J., & Athanasopoulos, G. (2018) Forecasting: principles and practice, 2nd edition, OTexts: Melbourne, Australia. OTexts.com/fpp3. Accessed on 2022-07-19.
Is $h$ the prediction horizon? If so, why does $h$ scale $b_t$ and shift $s_{t-m(k+1)}$?